VANTAGE-Bench Leaderboard and Evaluation Server Release

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  1. CHANGELOG.md +91 -0
  2. README.md +40 -13
  3. data/README.md +40 -11
  4. data/event_verification/data_jsons/annotations/VANTAGE_EventVerification.json +404 -0
  5. data/event_verification/data_jsons/annotations/tailgating_location_a.json +170 -0
  6. data/event_verification/data_jsons/annotations/tailgating_location_b.json +134 -0
  7. data/event_verification/data_jsons/annotations/warehouse_near_miss.json +278 -0
  8. data/event_verification/filtered/metropolis_event_verification/test_annotation.json +0 -406
  9. data/event_verification/filtered/tailgating/location_a/test_annotation.json +0 -172
  10. data/event_verification/filtered/tailgating/location_b/test_annotation.json +0 -136
  11. data/event_verification/filtered/warehouse_near_miss/test_annotations.json +0 -280
  12. data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_tailgate → videos}/10_15_2025_sp_8_35_08_sp_PM_sp__lp_UTC-07_00_rp_.mp4 +0 -0
  13. data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_tailgate → videos}/10_15_2025_sp_8_38_19_sp_PM_sp__lp_UTC-07_00_rp_.mp4 +0 -0
  14. data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_tailgate → videos}/10_15_2025_sp_8_39_16_sp_PM_sp__lp_UTC-07_00_rp_.mp4 +0 -0
  15. data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_tailgate → videos}/10_16_2025_sp_9_00_13_sp_PM_sp__lp_UTC-07_00_rp_.mp4 +0 -0
  16. data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_tailgate → videos}/10_16_2025_sp_9_10_29_sp_PM_sp__lp_UTC-07_00_rp_.mp4 +0 -0
  17. data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_tailgate → videos}/10_25_2025_sp_6_09_05_sp_PM_sp__lp_UTC-07_00_rp_.mp4 +0 -0
  18. data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_tailgate → videos}/10_25_2025_sp_6_12_31_sp_PM_sp__lp_UTC-07_00_rp_.mp4 +0 -0
  19. data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_tailgate → videos}/10_25_2025_sp_6_15_08_sp_PM_sp__lp_UTC-07_00_rp_.mp4 +0 -0
  20. data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_tailgate → videos}/10_25_2025_sp_6_22_57_sp_PM_sp__lp_UTC-07_00_rp_.mp4 +0 -0
  21. data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_tailgate → videos}/10_25_2025_sp_6_30_25_sp_PM_sp__lp_UTC-07_00_rp_.mp4 +0 -0
  22. data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_tailgate → videos}/10_25_2025_sp_6_32_48_sp_PM_sp__lp_UTC-07_00_rp_.mp4 +0 -0
  23. data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_tailgate → videos}/10_25_2025_sp_6_46_58_sp_PM_sp__lp_UTC-07_00_rp_.mp4 +0 -0
  24. data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_tailgate → videos}/10_25_2025_sp_6_48_55_sp_PM_sp__lp_UTC-07_00_rp_.mp4 +0 -0
  25. data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_tailgate → videos}/10_8_2025_sp_8_38_03_sp_PM_sp__lp_UTC-07_00_rp_.mp4 +0 -0
  26. data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_tailgate → videos}/10_8_2025_sp_8_43_54_sp_PM_sp__lp_UTC-07_00_rp_.mp4 +0 -0
  27. data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_tailgate → videos}/10_9_2025_sp_8_48_30_sp_PM_sp__lp_UTC-07_00_rp_.mp4 +0 -0
  28. data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_tailgate → videos}/10_9_2025_sp_8_51_57_sp_PM_sp__lp_UTC-07_00_rp_.mp4 +0 -0
  29. data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_badge → videos}/11_20_2025_sp_1_01_55_sp_PM_sp__lp_UTC-08_00_rp_.mp4 +0 -0
  30. data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_badge → videos}/11_20_2025_sp_4_13_08_sp_PM_sp__lp_UTC-08_00_rp_.mp4 +0 -0
  31. data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_badge → videos}/11_21_2025_sp_11_18_34_sp_AM_sp__lp_UTC-08_00_rp_.mp4 +0 -0
  32. data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_badge → videos}/11_21_2025_sp_11_40_45_sp_AM_sp__lp_UTC-08_00_rp_.mp4 +0 -0
  33. data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_tailgate → videos}/11_21_2025_sp_11_55_17_sp_AM_sp__lp_UTC-08_00_rp_.mp4 +0 -0
  34. data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_tailgate → videos}/11_21_2025_sp_11_56_03_sp_AM_sp__lp_UTC-08_00_rp_.mp4 +0 -0
  35. data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_badge → videos}/11_24_2025_sp_10_23_17_sp_AM_sp__lp_UTC-08_00_rp_.mp4 +0 -0
  36. data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_badge → videos}/11_24_2025_sp_10_44_28_sp_AM_sp__lp_UTC-08_00_rp_.mp4 +0 -0
  37. data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_badge → videos}/11_24_2025_sp_1_28_55_sp_PM_sp__lp_UTC-08_00_rp_.mp4 +0 -0
  38. data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_badge → videos}/11_24_2025_sp_2_57_33_sp_PM_sp__lp_UTC-08_00_rp_.mp4 +0 -0
  39. data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_badge → videos}/11_24_2025_sp_9_44_18_sp_AM_sp__lp_UTC-08_00_rp_.mp4 +0 -0
  40. data/event_verification/{filtered/metropolis_event_verification/safety_chunks → videos}/GX010011_Clip_8_27.mp4 +0 -0
  41. data/event_verification/{filtered/metropolis_event_verification/safety_chunks → videos}/GX010011_Clip_9_28.mp4 +0 -0
  42. data/event_verification/{filtered/metropolis_event_verification/traffic_chunks → videos}/IpgfZf6Y2BE_14.mp4 +0 -0
  43. data/event_verification/{filtered/metropolis_event_verification/traffic_chunks → videos}/IpgfZf6Y2BE_15.mp4 +0 -0
  44. data/event_verification/{filtered/metropolis_event_verification/traffic_chunks → videos}/LUPZNgg5idk_13.mp4 +0 -0
  45. data/event_verification/{filtered/metropolis_event_verification/traffic_chunks → videos}/MmsgbcpWn-k_19.mp4 +0 -0
  46. data/event_verification/{filtered/metropolis_event_verification/traffic_chunks → videos}/MmsgbcpWn-k_20.mp4 +0 -0
  47. data/event_verification/{filtered/metropolis_event_verification/traffic_chunks → videos}/MmsgbcpWn-k_21.mp4 +0 -0
  48. data/event_verification/{filtered/metropolis_event_verification/traffic_chunks → videos}/NOALQmAB4yE_16.mp4 +0 -0
  49. data/event_verification/{filtered/metropolis_event_verification/traffic_chunks → videos}/NOALQmAB4yE_24.mp4 +0 -0
  50. data/event_verification/{filtered/metropolis_event_verification/traffic_chunks → videos}/SEb7p5oszeM_17.mp4 +0 -0
CHANGELOG.md CHANGED
@@ -2,6 +2,97 @@
2
 
3
  All notable changes to **`nvidia/PhysicalAI-VANTAGE-Bench`** on Hugging Face.
4
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
5
  ## 2026-05-19
6
 
7
  - README YAML updated with a `configs:` block so the HF dataset viewer
 
2
 
3
  All notable changes to **`nvidia/PhysicalAI-VANTAGE-Bench`** on Hugging Face.
4
 
5
+ ## 2026-05-28
6
+ - **Added `scripts/run_lmudata.py`** — a participant-facing data-prep tool
7
+ that builds an inference-ready, no-ground-truth (no-GT) LMUData layout
8
+ compatible with VLMEvalKit. It covers all VANTAGE-Bench tasks (VQA, Event
9
+ Verification, DVC, Temporal, 2D Pointing, Astro2D, 2D Grounding/RefDrone,
10
+ and SOT), prepares data for VLMEvalKit `--mode infer` (no local scoring),
11
+ and supports both Hugging Face remote sourcing
12
+ (`nvidia/PhysicalAI-VANTAGE-Bench`) and direct local dataset-repo sourcing
13
+ (auto-detected when run from inside this repo, or via `--local-source`).
14
+ Includes SOT preparation (downloads SmartSpaces source videos and extracts
15
+ frames via `ffmpeg`) and RefDrone/Grounding image preparation.
16
+ - **Added `scripts/RUN_LMUData.md`** — a participant onboarding guide covering
17
+ setup, the HF cache, disk-space requirements, copy-vs-symlink media modes,
18
+ per-task data preparation notes, SOT internals/prerequisites, and
19
+ troubleshooting.
20
+
21
+ ## 2026-05-27
22
+ - **`data/pointing/` migrated to JSONL as the canonical annotation
23
+ format.** `data/pointing/VANTAGE_2DPointing.jsonl` (1,005 lines, one
24
+ sample object per line, 8 fields: `index, question_id, image_path,
25
+ question, A, B, C, D`) replaces `VANTAGE_2DPointing.tsv`, which has
26
+ been removed. The JSONL is a lossless conversion of the prior TSV —
27
+ same 1,005 samples, same field values, same row order, with `index`
28
+ widened from string to integer. No sample content changed and no
29
+ ground-truth fields (`answer`, `target_point`) were introduced. The
30
+ Hugging Face Dataset Viewer `pointing` config now resolves cleanly
31
+ alongside the other JSON/JSONL configs (the mixed `.tsv`/`.jsonl`
32
+ `configs:` block was triggering HF's JSON builder on the TSV and
33
+ failing with an `ArrowInvalid: JSON parse error`).
34
+ - **`data/event_verification/data_jsons/annotations/*.json` unwrapped
35
+ to top-level lists.** Each of the four files
36
+ (`VANTAGE_EventVerification.json` — 67 entries,
37
+ `tailgating_location_a.json` — 28, `tailgating_location_b.json` — 22,
38
+ `warehouse_near_miss.json` — 46; 163 total) was rewritten from
39
+ `{"bcq": [...]}` to `[...]`, matching the
40
+ `vqa/data_jsons/annotations/` and
41
+ `temporal_localization/data_jsons/annotations/` layouts. Every sample
42
+ object (`{id, video, system_prompt, question}`) is preserved
43
+ byte-for-byte and entry order is unchanged. This lets the Hugging
44
+ Face Dataset Viewer row-expand the files to 163 (instead of
45
+ collapsing each top-level object to a single row, which produced
46
+ 4 rows in the viewer).
47
+ - **`data/pointing/VANTAGE_2DPointing.tsv` updated.** MCQ option
48
+ coordinates (columns `A`–`D`) are now expressed in the normalized
49
+ `0–1000` coordinate system (each cell is an `x,y` pair, with both
50
+ components in `[0, 1000]` relative to the image dimensions). The
51
+ public TSV ships only the question side: columns are
52
+ `index, question_id, image_path, question, A, B, C, D`; the
53
+ ground-truth fields (`answer`, `target_point`) are held server-side
54
+ and are not included in the released file.
55
+ - **`data/event_verification/` flattened** to match the `vqa/` and
56
+ `temporal_localization/` layout. The `filtered/.../{metropolis,tailgating,warehouse_near_miss}`
57
+ subtree was removed; all 163 videos now live directly under
58
+ `data/event_verification/videos/`, and the four annotation JSONs were
59
+ moved + renamed to
60
+ `data/event_verification/data_jsons/annotations/{metropolis_event_verification,tailgating_location_a,tailgating_location_b,warehouse_near_miss}.json`.
61
+ Each `bcq[].video` is now the basename (e.g. `example.mp4`) and each
62
+ `bcq[].id` is the stem (e.g. `example`); all other fields, entry
63
+ order, and counts (163 total) are preserved. The `configs:` glob in
64
+ the top-level README is updated accordingly.
65
+ - Renamed remaining active Metropolis-named annotation JSON artifacts to
66
+ VANTAGE naming for public dataset consistency:
67
+ `data/event_verification/data_jsons/annotations/metropolis_event_verification.json`
68
+ → `data/event_verification/data_jsons/annotations/VANTAGE_EventVerification.json`;
69
+ `data/vqa/data_jsons/annotations/Metropolis_VQA_Verification_Final_ITS_Data.json`
70
+ → `data/vqa/data_jsons/annotations/VANTAGE_VQA_Verification_Final_ITS_Data.json`.
71
+ File contents are unchanged; only filenames moved. The `configs:`
72
+ globs in the top-level README already match the new filenames.
73
+ `data/README.md` updated to reference the new event-verification
74
+ filename.
75
+ - **`data/vqa/data_jsons/annotations/*.json` reduced to inference-oriented fields.**
76
+ Each entry now carries exactly `{q_uid, question, options}`. The
77
+ metadata fields `industry`, `event_type`, `start_time`, `end_time`,
78
+ `video_duration`, `task_type`, and `dimension` were removed across all
79
+ five files. Entry count (1,195) and values of the retained fields are
80
+ unchanged. Smoke-tested against VLMEvalKit's `VANTAGE_VQA` inference
81
+ preparation: TSV regeneration, prompt building, and video resolution
82
+ all pass.
83
+ - **`data/temporal_localization/data_jsons/annotations/*.json` reduced
84
+ to inference-oriented fields.** Each entry now carries exactly
85
+ `{vid, question_id, question}` (key order preserved). The metadata
86
+ fields `industry`, `event_type`, `task_type`, and `duration` were
87
+ removed across all three files. Entry count (1,067) and values of the
88
+ retained fields are unchanged; the 1,067 `question_id`s remain
89
+ globally unique. Smoke-tested against VLMEvalKit's `VANTAGE_Temporal`
90
+ inference preparation: TSV regeneration, prompt building, and video
91
+ resolution all pass.
92
+ - Event Verification annotations were left unchanged in this pass; the
93
+ current `data/event_verification/data_jsons/annotations/*.json`
94
+ schema is treated as already inference-appropriate.
95
+
96
  ## 2026-05-19
97
 
98
  - README YAML updated with a `configs:` block so the HF dataset viewer
README.md CHANGED
@@ -14,7 +14,7 @@ configs:
14
  - config_name: event_verification
15
  data_files:
16
  - split: test
17
- path: data/event_verification/filtered/**/*.json
18
  - config_name: referring
19
  data_files:
20
  - split: test
@@ -22,7 +22,7 @@ configs:
22
  - config_name: pointing
23
  data_files:
24
  - split: test
25
- path: data/pointing/Vantage2DPointing.tsv
26
  - config_name: tracking
27
  data_files:
28
  - split: test
@@ -43,10 +43,27 @@ configs:
43
 
44
  ## Dataset Description
45
 
46
- VANTAGE-BENCH is the first public benchmark purpose-built for evaluating visual understanding on video captured by fixed infrastructure cameras. It spans three real-world domains — warehouse, smart city / Intelligent Transportation Systems (ITS), and smart spaces — across six spatio-temporal video understanding tasks including video question answering (VQA), temporal grounding, dense video captioning, event verification, spatial grounding, and spatio-temporal tracking.
47
 
48
  This dataset is for evaluation purposes only.
49
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
50
  ## Dataset Owner(s)
51
 
52
  NVIDIA Corporation
@@ -89,30 +106,38 @@ VANTAGE-BENCH/
89
  | Category | Task | Metric |
90
  |----------|------|--------|
91
  | Semantic | VQA | Accuracy |
92
- | Semantic | Event Verification | F1 Score |
93
  | Temporal | Dense Video Captioning | SODA-c |
94
- | Temporal | Temporal Localization | mAP@tIoU |
95
  | Spatial | 2D Object Localization | F1@0.5 |
96
  | Spatial | 2D Referring Expressions | mIoU |
97
- | Spatial | 2D Spatial Pointing | Pointing Accuracy |
98
  | Spatio-Temporal | Single Object Tracking | AUC |
99
 
100
- Expected submission formats and the leaderboard will be published soon.
101
 
102
  ### Metric Notes
103
 
104
  - **Accuracy**: Percentage of correct predictions.
105
  - **SODA-c**: Metric for dense video captioning quality across event coverage and language quality.
106
- - **mAP@tIoU**: Mean Average Precision measured over temporal IoU thresholds.
107
- - **F1 Score**: Harmonic mean of precision and recall.
108
  - **F1@0.5**: F1 score at an IoU threshold of 0.5.
109
- - **mIoU**: Mean Intersection over Union — average overlap between predicted and ground-truth bounding boxes.
110
- - **Pointing Accuracy**: Percentage of correctly selected target regions.
111
  - **AUC**: Area under the ROC curve, measuring the model's ability to distinguish correct detections or tracks from incorrect ones across varying confidence thresholds.
112
 
113
  ### Evaluation Server
114
 
115
- The [VANTAGE-Bench GitHub repository](https://github.com/anon-benchmark/VANTAGE-bench) provides a sample evaluation pipeline for generating model predictions. Predictions are submitted to the official leaderboard, which will go live by the end of May 2026.
 
 
 
 
 
 
 
 
 
 
116
 
117
  ## Dataset Format
118
 
@@ -167,7 +192,9 @@ Video (mp4) and Images (jpg).
167
 
168
  ## References
169
 
170
- - HuggingFace dataset: [nvidia/PhysicalAI-VANTAGE-Bench](https://huggingface.co/datasets/nvidia/PhysicalAI-VANTAGE-Bench)
 
 
171
 
172
  <img src="./assets/vantage_bench_tasks.png" alt="VANTAGE-BENCH task overview across Semantic, Temporal, Spatial, and Spatio-Temporal understanding categories" width="100%">
173
 
 
14
  - config_name: event_verification
15
  data_files:
16
  - split: test
17
+ path: data/event_verification/data_jsons/annotations/*.json
18
  - config_name: referring
19
  data_files:
20
  - split: test
 
22
  - config_name: pointing
23
  data_files:
24
  - split: test
25
+ path: data/pointing/VANTAGE_2DPointing.jsonl
26
  - config_name: tracking
27
  data_files:
28
  - split: test
 
43
 
44
  ## Dataset Description
45
 
46
+ VANTAGE-BENCH is the first public benchmark purpose-built for evaluating visual understanding on video captured by fixed infrastructure cameras. It spans three real-world domains — warehouse, smart city / Intelligent Transportation Systems (ITS), and smart spaces — across 8 tasks spanning semantic, temporal, spatial, and spatio-temporal evaluation, including video question answering (VQA), temporal grounding, dense video captioning, event verification, spatial grounding, and spatio-temporal tracking.
47
 
48
  This dataset is for evaluation purposes only.
49
 
50
+ ## Quick Links
51
+
52
+ - **Official Website:** https://vantage-bench.org/
53
+ - **Official Leaderboard:** https://huggingface.co/spaces/clemson-computing/VANTAGE-Bench-Leaderboard
54
+ - **Prepare LMUData for VLMEvalKit:**
55
+ To prepare an inference-ready, no-ground-truth LMUData layout for running VANTAGE-Bench with VLMEvalKit:
56
+
57
+ ```bash
58
+ python scripts/run_lmudata.py --all
59
+ ```
60
+
61
+ Full setup instructions, disk requirements, troubleshooting, and task-specific notes are available in:
62
+
63
+ ```text
64
+ scripts/RUN_LMUData.md
65
+ ```
66
+
67
  ## Dataset Owner(s)
68
 
69
  NVIDIA Corporation
 
106
  | Category | Task | Metric |
107
  |----------|------|--------|
108
  | Semantic | VQA | Accuracy |
109
+ | Semantic | Event Verification | Macro F1 |
110
  | Temporal | Dense Video Captioning | SODA-c |
111
+ | Temporal | Temporal Localization | mIoU |
112
  | Spatial | 2D Object Localization | F1@0.5 |
113
  | Spatial | 2D Referring Expressions | mIoU |
114
+ | Spatial | 2D Spatial Pointing | Accuracy |
115
  | Spatio-Temporal | Single Object Tracking | AUC |
116
 
117
+ Expected submission formats are described in `scripts/RUN_LMUData.md`. Results are submitted to the [official leaderboard](https://huggingface.co/spaces/clemson-computing/VANTAGE-Bench-Leaderboard).
118
 
119
  ### Metric Notes
120
 
121
  - **Accuracy**: Percentage of correct predictions.
122
  - **SODA-c**: Metric for dense video captioning quality across event coverage and language quality.
123
+ - **Macro F1**: Unweighted mean of per-class F1 scores (harmonic mean of precision and recall).
 
124
  - **F1@0.5**: F1 score at an IoU threshold of 0.5.
125
+ - **mIoU**: Mean Intersection over Union — average overlap between predicted and ground-truth bounding boxes (also used for temporal localization spans).
 
126
  - **AUC**: Area under the ROC curve, measuring the model's ability to distinguish correct detections or tracks from incorrect ones across varying confidence thresholds.
127
 
128
  ### Evaluation Server
129
 
130
+ The VANTAGE-Bench evaluation workflow is designed for inference and server-side scoring. Users should first prepare an inference-ready LMUData layout using:
131
+
132
+ ```bash
133
+ python scripts/run_lmudata.py --all
134
+ ```
135
+
136
+ Then run VLMEvalKit inference with `--mode infer`. Generated predictions can be submitted to the official leaderboard:
137
+
138
+ https://huggingface.co/spaces/clemson-computing/VANTAGE-Bench-Leaderboard
139
+
140
+ See `scripts/RUN_LMUData.md` for setup, disk requirements, troubleshooting, and task-specific notes.
141
 
142
  ## Dataset Format
143
 
 
192
 
193
  ## References
194
 
195
+ - **Official Website:** https://vantage-bench.org/
196
+ - **Official Leaderboard:** https://huggingface.co/spaces/clemson-computing/VANTAGE-Bench-Leaderboard
197
+ - **Hugging Face Dataset:** https://huggingface.co/datasets/nvidia/PhysicalAI-VANTAGE-Bench
198
 
199
  <img src="./assets/vantage_bench_tasks.png" alt="VANTAGE-BENCH task overview across Semantic, Temporal, Spatial, and Spatio-Temporal understanding categories" width="100%">
200
 
data/README.md CHANGED
@@ -15,12 +15,10 @@ data/
15
  │ ├── prompt.json
16
  │ └── *.mp4
17
  ├── event_verification/ # Binary event classification
18
- ── filtered/
19
- ── metropolis_event_verification/{*.mp4, test_annotation.json}
20
- │ ├── tailgating/{location_a, location_b}/{*.mp4, test_annotation.json}
21
- │ └── warehouse_near_miss/{*.mp4, test_annotations.json}
22
  ├── pointing/ # 2D spatial pointing
23
- │ └── Vantage2DPointing.tsv
24
  ├── referring/ # 2D referring expressions
25
  │ └── refdrone_test_llava.json
26
  ├── temporal_localization/ # Temporal grounding
@@ -45,18 +43,49 @@ Tasks without a per-entry `question` field carry a top-level
45
  > Describe the notable events in the provided video. Provide the result in json format with `mm:ss.ff` format for time depiction for each event. Use keywords `start`, `end` and `caption` in the json output.
46
 
47
  ### `vqa/` — Video Question Answering
48
- Per-entry questions in `vqa/data_jsons/annotations/*.json`. Each entry has `{q_uid, question, options, …}`; answer keys (`gt`, `gt_option`, `*_update_*`, etc.) are removed.
 
 
 
 
 
 
 
 
 
49
 
50
  ### `temporal_localization/` — Temporal Grounding
51
- Per-entry questions in `temporal_localization/data_jsons/annotations/*.json`. Each entry has `{vid, question_id, question, duration, …}`; the `answer` timestamps are removed.
 
 
 
 
 
 
 
 
52
 
53
  ### `event_verification/` — Binary Event Verification
54
- All four annotation files share a unified schema:
55
- `{"bcq": [{id, video, system_prompt, question}, …]}`. The binary `answer`
56
- is removed.
 
 
 
 
 
 
 
57
 
58
  ### `pointing/` — 2D Spatial Pointing
59
- `Vantage2DPointing.tsv` — tab-separated. Each row carries the question and multiple-choice options; the last two ground-truth columns are dropped.
 
 
 
 
 
 
 
60
 
61
  ### `referring/` — 2D Referring Expressions
62
  `refdrone_test_llava.json` — list of LLaVA conversation entries. Only the `human` turn (the question) is retained; the `gpt` turn (predicted bboxes) and GT meta fields are removed.
 
15
  │ ├── prompt.json
16
  │ └── *.mp4
17
  ├── event_verification/ # Binary event classification
18
+ ── *.mp4 (under videos/)
19
+ ── data_jsons/annotations/*.json
 
 
20
  ├── pointing/ # 2D spatial pointing
21
+ │ └── VANTAGE_2DPointing.jsonl
22
  ├── referring/ # 2D referring expressions
23
  │ └── refdrone_test_llava.json
24
  ├── temporal_localization/ # Temporal grounding
 
43
  > Describe the notable events in the provided video. Provide the result in json format with `mm:ss.ff` format for time depiction for each event. Use keywords `start`, `end` and `caption` in the json output.
44
 
45
  ### `vqa/` — Video Question Answering
46
+ Per-entry questions in `vqa/data_jsons/annotations/*.json`. Each entry
47
+ carries exactly three fields, scoped to model inference:
48
+ - `q_uid` — video/sample identifier; resolves against `vqa/videos/`
49
+ - `question` — natural-language question text
50
+ - `options` — list of MCQ answer choices used to build the prompt
51
+
52
+ Ground-truth (`gt_option`, `answer`) and per-question metadata
53
+ (`industry`, `event_type`, `task_type`, `dimension`, `start_time`,
54
+ `end_time`, `video_duration`) are not included in the public
55
+ annotations.
56
 
57
  ### `temporal_localization/` — Temporal Grounding
58
+ Per-entry questions in `temporal_localization/data_jsons/annotations/*.json`.
59
+ Each entry carries exactly three fields, scoped to model inference:
60
+ - `vid` — video identifier; resolves against `temporal_localization/`
61
+ - `question_id` — stable annotation identifier (reproducibility key)
62
+ - `question` — temporal-localization query
63
+
64
+ Ground-truth timestamps and per-question metadata (`industry`,
65
+ `event_type`, `task_type`, `duration`) are not included in the public
66
+ annotations.
67
 
68
  ### `event_verification/` — Binary Event Verification
69
+ Per-entry questions in `event_verification/data_jsons/annotations/*.json`
70
+ (four files: `VANTAGE_EventVerification.json` 67 entries,
71
+ `tailgating_location_a.json` — 28, `tailgating_location_b.json` — 22,
72
+ `warehouse_near_miss.json` — 46; 163 total). Each file is a top-level
73
+ list of sample objects with schema
74
+ `[{id, video, system_prompt, question}, …]` — matching the
75
+ `vqa/` and `temporal_localization/` annotation layout — where `video`
76
+ is the basename (e.g. `example.mp4`) and `id` is the stem
77
+ (e.g. `example`), resolving against `event_verification/videos/`. The
78
+ binary `answer` is removed.
79
 
80
  ### `pointing/` — 2D Spatial Pointing
81
+ `VANTAGE_2DPointing.jsonl` — one JSON object per line, 1,005 lines,
82
+ 8 fields: `index, question_id, image_path, question, A, B, C, D`. Each
83
+ line carries the question and four multiple-choice options (`A`–`D`);
84
+ each option is an `x,y` pair (string `"x,y"`) in the **normalized
85
+ `0–1000` coordinate system** (both components in `[0, 1000]` relative
86
+ to the image dimensions). `index` is an integer in `[0, 1004]`.
87
+ Ground-truth fields (`answer`, `target_point`) are held server-side and
88
+ are not included in the public JSONL.
89
 
90
  ### `referring/` — 2D Referring Expressions
91
  `refdrone_test_llava.json` — list of LLaVA conversation entries. Only the `human` turn (the question) is retained; the `gpt` turn (predicted bboxes) and GT meta fields are removed.
data/event_verification/data_jsons/annotations/VANTAGE_EventVerification.json ADDED
@@ -0,0 +1,404 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ [
2
+ {
3
+ "id": "LUPZNgg5idk_13",
4
+ "video": "LUPZNgg5idk_13.mp4",
5
+ "system_prompt": "You are a traffic monitoring system analyzing video of a street. Determine if a collision between vehicles, or vehicle and pedestrian or vehicle and cyclist has likely occurred.\nThe clip may not show the exact moment of impact, so use post-event evidence such as:\n- Vehicles in contact or showing visible damage (dents, debris, smoke, broken parts).\n- Pedestrian or cyclist on the ground, struck, or showing clear signs of impact or distress.. \n- Abnormal positions (intersecting, facing opposite directions, one against the side/rear of another).\n- Stationary vehicles remaining in contact or stopped in unnatural alignment.\n- Behavior inconsistent with normal driving (sudden halt, failure to separate, blocked motion).\n- Other unusual signs (e.g., airbags, leaking fluids, shattered glass) can also support the conclusion.\nA collision is “likely” if two or more independent cues strongly indicate impact, even if the collision itself is not shown. If evidence is weak or ambiguous, do not assume a collision.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
6
+ "question": "Did a collision occur between two or more vehicles?"
7
+ },
8
+ {
9
+ "id": "IpgfZf6Y2BE_14",
10
+ "video": "IpgfZf6Y2BE_14.mp4",
11
+ "system_prompt": "You are a traffic monitoring system analyzing video of a street. Determine if a collision between vehicles, or vehicle and pedestrian or vehicle and cyclist has likely occurred.\nThe clip may not show the exact moment of impact, so use post-event evidence such as:\n- Vehicles in contact or showing visible damage (dents, debris, smoke, broken parts).\n- Pedestrian or cyclist on the ground, struck, or showing clear signs of impact or distress.. \n- Abnormal positions (intersecting, facing opposite directions, one against the side/rear of another).\n- Stationary vehicles remaining in contact or stopped in unnatural alignment.\n- Behavior inconsistent with normal driving (sudden halt, failure to separate, blocked motion).\n- Other unusual signs (e.g., airbags, leaking fluids, shattered glass) can also support the conclusion.\nA collision is “likely” if two or more independent cues strongly indicate impact, even if the collision itself is not shown. If evidence is weak or ambiguous, do not assume a collision.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
12
+ "question": "Did a collision occur between two or more vehicles?"
13
+ },
14
+ {
15
+ "id": "IpgfZf6Y2BE_15",
16
+ "video": "IpgfZf6Y2BE_15.mp4",
17
+ "system_prompt": "You are a traffic monitoring system analyzing video of a street. Determine if a collision between vehicles, or vehicle and pedestrian or vehicle and cyclist has likely occurred.\nThe clip may not show the exact moment of impact, so use post-event evidence such as:\n- Vehicles in contact or showing visible damage (dents, debris, smoke, broken parts).\n- Pedestrian or cyclist on the ground, struck, or showing clear signs of impact or distress.. \n- Abnormal positions (intersecting, facing opposite directions, one against the side/rear of another).\n- Stationary vehicles remaining in contact or stopped in unnatural alignment.\n- Behavior inconsistent with normal driving (sudden halt, failure to separate, blocked motion).\n- Other unusual signs (e.g., airbags, leaking fluids, shattered glass) can also support the conclusion.\nA collision is “likely” if two or more independent cues strongly indicate impact, even if the collision itself is not shown. If evidence is weak or ambiguous, do not assume a collision.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
18
+ "question": "Did a collision occur between two or more vehicles?"
19
+ },
20
+ {
21
+ "id": "NOALQmAB4yE_16",
22
+ "video": "NOALQmAB4yE_16.mp4",
23
+ "system_prompt": "You are a traffic monitoring system analyzing video of a street. Determine if a collision between vehicles, or vehicle and pedestrian or vehicle and cyclist has likely occurred.\nThe clip may not show the exact moment of impact, so use post-event evidence such as:\n- Vehicles in contact or showing visible damage (dents, debris, smoke, broken parts).\n- Pedestrian or cyclist on the ground, struck, or showing clear signs of impact or distress.. \n- Abnormal positions (intersecting, facing opposite directions, one against the side/rear of another).\n- Stationary vehicles remaining in contact or stopped in unnatural alignment.\n- Behavior inconsistent with normal driving (sudden halt, failure to separate, blocked motion).\n- Other unusual signs (e.g., airbags, leaking fluids, shattered glass) can also support the conclusion.\nA collision is “likely” if two or more independent cues strongly indicate impact, even if the collision itself is not shown. If evidence is weak or ambiguous, do not assume a collision.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
24
+ "question": "Did a vehicle collide with pedestrian?"
25
+ },
26
+ {
27
+ "id": "SEb7p5oszeM_17",
28
+ "video": "SEb7p5oszeM_17.mp4",
29
+ "system_prompt": "You are a traffic monitoring system analyzing video of a street. Determine if a collision between vehicles, or vehicle and pedestrian or vehicle and cyclist has likely occurred.\nThe clip may not show the exact moment of impact, so use post-event evidence such as:\n- Vehicles in contact or showing visible damage (dents, debris, smoke, broken parts).\n- Pedestrian or cyclist on the ground, struck, or showing clear signs of impact or distress.. \n- Abnormal positions (intersecting, facing opposite directions, one against the side/rear of another).\n- Stationary vehicles remaining in contact or stopped in unnatural alignment.\n- Behavior inconsistent with normal driving (sudden halt, failure to separate, blocked motion).\n- Other unusual signs (e.g., airbags, leaking fluids, shattered glass) can also support the conclusion.\nA collision is “likely” if two or more independent cues strongly indicate impact, even if the collision itself is not shown. If evidence is weak or ambiguous, do not assume a collision.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
30
+ "question": "Did a vehicle collide with a cyclist?"
31
+ },
32
+ {
33
+ "id": "SEb7p5oszeM_18",
34
+ "video": "SEb7p5oszeM_18.mp4",
35
+ "system_prompt": "You are a traffic monitoring system analyzing video of a street. Determine if a collision between vehicles, or vehicle and pedestrian or vehicle and cyclist has likely occurred.\nThe clip may not show the exact moment of impact, so use post-event evidence such as:\n- Vehicles in contact or showing visible damage (dents, debris, smoke, broken parts).\n- Pedestrian or cyclist on the ground, struck, or showing clear signs of impact or distress.. \n- Abnormal positions (intersecting, facing opposite directions, one against the side/rear of another).\n- Stationary vehicles remaining in contact or stopped in unnatural alignment.\n- Behavior inconsistent with normal driving (sudden halt, failure to separate, blocked motion).\n- Other unusual signs (e.g., airbags, leaking fluids, shattered glass) can also support the conclusion.\nA collision is “likely” if two or more independent cues strongly indicate impact, even if the collision itself is not shown. If evidence is weak or ambiguous, do not assume a collision.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
36
+ "question": "Did a vehicle collide with a pedestrian?"
37
+ },
38
+ {
39
+ "id": "MmsgbcpWn-k_19",
40
+ "video": "MmsgbcpWn-k_19.mp4",
41
+ "system_prompt": "You are a traffic monitoring system analyzing video of a street. Determine if a collision between vehicles, or vehicle and pedestrian or vehicle and cyclist has likely occurred.\nThe clip may not show the exact moment of impact, so use post-event evidence such as:\n- Vehicles in contact or showing visible damage (dents, debris, smoke, broken parts).\n- Pedestrian or cyclist on the ground, struck, or showing clear signs of impact or distress.. \n- Abnormal positions (intersecting, facing opposite directions, one against the side/rear of another).\n- Stationary vehicles remaining in contact or stopped in unnatural alignment.\n- Behavior inconsistent with normal driving (sudden halt, failure to separate, blocked motion).\n- Other unusual signs (e.g., airbags, leaking fluids, shattered glass) can also support the conclusion.\nA collision is “likely” if two or more independent cues strongly indicate impact, even if the collision itself is not shown. If evidence is weak or ambiguous, do not assume a collision.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
42
+ "question": "Did a collision occur between two or more vehicles?"
43
+ },
44
+ {
45
+ "id": "MmsgbcpWn-k_20",
46
+ "video": "MmsgbcpWn-k_20.mp4",
47
+ "system_prompt": "You are a traffic monitoring system analyzing video of a street. Determine if a collision between vehicles, or vehicle and pedestrian or vehicle and cyclist has likely occurred.\nThe clip may not show the exact moment of impact, so use post-event evidence such as:\n- Vehicles in contact or showing visible damage (dents, debris, smoke, broken parts).\n- Pedestrian or cyclist on the ground, struck, or showing clear signs of impact or distress.. \n- Abnormal positions (intersecting, facing opposite directions, one against the side/rear of another).\n- Stationary vehicles remaining in contact or stopped in unnatural alignment.\n- Behavior inconsistent with normal driving (sudden halt, failure to separate, blocked motion).\n- Other unusual signs (e.g., airbags, leaking fluids, shattered glass) can also support the conclusion.\nA collision is “likely” if two or more independent cues strongly indicate impact, even if the collision itself is not shown. If evidence is weak or ambiguous, do not assume a collision.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
48
+ "question": "Did a collision occur between two or more vehicles?"
49
+ },
50
+ {
51
+ "id": "MmsgbcpWn-k_21",
52
+ "video": "MmsgbcpWn-k_21.mp4",
53
+ "system_prompt": "You are a traffic monitoring system analyzing video of a street. Determine if a collision between vehicles, or vehicle and pedestrian or vehicle and cyclist has likely occurred.\nThe clip may not show the exact moment of impact, so use post-event evidence such as:\n- Vehicles in contact or showing visible damage (dents, debris, smoke, broken parts).\n- Pedestrian or cyclist on the ground, struck, or showing clear signs of impact or distress.. \n- Abnormal positions (intersecting, facing opposite directions, one against the side/rear of another).\n- Stationary vehicles remaining in contact or stopped in unnatural alignment.\n- Behavior inconsistent with normal driving (sudden halt, failure to separate, blocked motion).\n- Other unusual signs (e.g., airbags, leaking fluids, shattered glass) can also support the conclusion.\nA collision is “likely” if two or more independent cues strongly indicate impact, even if the collision itself is not shown. If evidence is weak or ambiguous, do not assume a collision.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
54
+ "question": "Did a collision occur between two or more vehicles?"
55
+ },
56
+ {
57
+ "id": "NOALQmAB4yE_24",
58
+ "video": "NOALQmAB4yE_24.mp4",
59
+ "system_prompt": "You are a traffic monitoring system analyzing video of a street. Determine if a collision between vehicles, or vehicle and pedestrian or vehicle and cyclist has likely occurred.\nThe clip may not show the exact moment of impact, so use post-event evidence such as:\n- Vehicles in contact or showing visible damage (dents, debris, smoke, broken parts).\n- Pedestrian or cyclist on the ground, struck, or showing clear signs of impact or distress.. \n- Abnormal positions (intersecting, facing opposite directions, one against the side/rear of another).\n- Stationary vehicles remaining in contact or stopped in unnatural alignment.\n- Behavior inconsistent with normal driving (sudden halt, failure to separate, blocked motion).\n- Other unusual signs (e.g., airbags, leaking fluids, shattered glass) can also support the conclusion.\nA collision is “likely” if two or more independent cues strongly indicate impact, even if the collision itself is not shown. If evidence is weak or ambiguous, do not assume a collision.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
60
+ "question": "Did a collision occur between two or more vehicles?"
61
+ },
62
+ {
63
+ "id": "evs_134db13b21",
64
+ "video": "evs_134db13b21.mp4",
65
+ "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
66
+ "question": "Did a person tailgate through the access gate without badging?"
67
+ },
68
+ {
69
+ "id": "evs_99c1cd175d",
70
+ "video": "evs_99c1cd175d.mp4",
71
+ "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
72
+ "question": "Did a person tailgate through the access gate without badging?"
73
+ },
74
+ {
75
+ "id": "evs_8cc3cd0258",
76
+ "video": "evs_8cc3cd0258.mp4",
77
+ "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
78
+ "question": "Did a person tailgate through the access gate without badging?"
79
+ },
80
+ {
81
+ "id": "evs_bc929d97da",
82
+ "video": "evs_bc929d97da.mp4",
83
+ "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
84
+ "question": "Did a person tailgate through the access gate without badging?"
85
+ },
86
+ {
87
+ "id": "evs_d897e4ada3",
88
+ "video": "evs_d897e4ada3.mp4",
89
+ "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
90
+ "question": "Did a person tailgate through the access gate without badging?"
91
+ },
92
+ {
93
+ "id": "evs_c3e684b820",
94
+ "video": "evs_c3e684b820.mp4",
95
+ "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
96
+ "question": "Did a person tailgate through the access gate without badging?"
97
+ },
98
+ {
99
+ "id": "evs_17560f2666",
100
+ "video": "evs_17560f2666.mp4",
101
+ "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
102
+ "question": "Did a person tailgate through the access gate without badging?"
103
+ },
104
+ {
105
+ "id": "evs_0f0c53aa1c",
106
+ "video": "evs_0f0c53aa1c.mp4",
107
+ "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
108
+ "question": "Did a person tailgate through the access gate without badging?"
109
+ },
110
+ {
111
+ "id": "evs_405dd1e5f8",
112
+ "video": "evs_405dd1e5f8.mp4",
113
+ "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
114
+ "question": "Did a person tailgate through the access gate without badging?"
115
+ },
116
+ {
117
+ "id": "evs_8f5ae5b865",
118
+ "video": "evs_8f5ae5b865.mp4",
119
+ "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
120
+ "question": "Did a person tailgate through the access gate without badging?"
121
+ },
122
+ {
123
+ "id": "evs_50815b9c8c",
124
+ "video": "evs_50815b9c8c.mp4",
125
+ "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
126
+ "question": "Did a person tailgate through the access gate without badging?"
127
+ },
128
+ {
129
+ "id": "tailgating_13",
130
+ "video": "tailgating_13.mp4",
131
+ "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
132
+ "question": "Did a person tailgate through the access gate without badging?"
133
+ },
134
+ {
135
+ "id": "evs_866549be90",
136
+ "video": "evs_866549be90.mp4",
137
+ "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
138
+ "question": "Did a person tailgate through the access gate without badging?"
139
+ },
140
+ {
141
+ "id": "evs_e5ccfbd6bd",
142
+ "video": "evs_e5ccfbd6bd.mp4",
143
+ "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
144
+ "question": "Did a person tailgate through the access gate without badging?"
145
+ },
146
+ {
147
+ "id": "evs_d2523c5c64",
148
+ "video": "evs_d2523c5c64.mp4",
149
+ "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
150
+ "question": "Did a person tailgate through the access gate without badging?"
151
+ },
152
+ {
153
+ "id": "evs_f717d6dd57",
154
+ "video": "evs_f717d6dd57.mp4",
155
+ "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
156
+ "question": "Did a person tailgate through the access gate without badging?"
157
+ },
158
+ {
159
+ "id": "evs_110cbe0aac",
160
+ "video": "evs_110cbe0aac.mp4",
161
+ "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
162
+ "question": "Is anyone fighting?"
163
+ },
164
+ {
165
+ "id": "evs_8e472b1db0",
166
+ "video": "evs_8e472b1db0.mp4",
167
+ "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
168
+ "question": "Is anyone fighting?"
169
+ },
170
+ {
171
+ "id": "evs_abf9d9bc50",
172
+ "video": "evs_abf9d9bc50.mp4",
173
+ "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
174
+ "question": "Did a person tailgate through the access gate without badging?"
175
+ },
176
+ {
177
+ "id": "evs_c950abf04f",
178
+ "video": "evs_c950abf04f.mp4",
179
+ "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
180
+ "question": "Did a person tailgate through the access gate without badging?"
181
+ },
182
+ {
183
+ "id": "Security_3_22",
184
+ "video": "Security_3_22.mp4",
185
+ "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
186
+ "question": "Is anyone fighting?"
187
+ },
188
+ {
189
+ "id": "Security_2_23",
190
+ "video": "Security_2_23.mp4",
191
+ "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
192
+ "question": "Did a person tailgate through the access gate without badging?"
193
+ },
194
+ {
195
+ "id": "Security_2_24",
196
+ "video": "Security_2_24.mp4",
197
+ "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
198
+ "question": "Did a person tailgate through the access gate without badging?"
199
+ },
200
+ {
201
+ "id": "Security_2_25",
202
+ "video": "Security_2_25.mp4",
203
+ "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
204
+ "question": "Entering is from left to right and exiting is from right to left, is anyone exiting with a cart full of equipment?"
205
+ },
206
+ {
207
+ "id": "Security_2_26",
208
+ "video": "Security_2_26.mp4",
209
+ "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
210
+ "question": "Entering is from left to right and exiting is from right to left, is anyone entering with a cart full of equipment?"
211
+ },
212
+ {
213
+ "id": "GX010011_Clip_8_27",
214
+ "video": "GX010011_Clip_8_27.mp4",
215
+ "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
216
+ "question": "Is the hallway overcrowded?"
217
+ },
218
+ {
219
+ "id": "GX010011_Clip_9_28",
220
+ "video": "GX010011_Clip_9_28.mp4",
221
+ "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
222
+ "question": "Does everyone scan a badge to enter the room?"
223
+ },
224
+ {
225
+ "id": "evs_f262e9ed6a",
226
+ "video": "evs_f262e9ed6a.mp4",
227
+ "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
228
+ "question": "Did a person tailgate through the access gate without badging?"
229
+ },
230
+ {
231
+ "id": "evs_48a0587066",
232
+ "video": "evs_48a0587066.mp4",
233
+ "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
234
+ "question": "Did a person tailgate through the access gate without badging?"
235
+ },
236
+ {
237
+ "id": "evs_191151ccf4",
238
+ "video": "evs_191151ccf4.mp4",
239
+ "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
240
+ "question": "Did a person tailgate through the access gate without badging?"
241
+ },
242
+ {
243
+ "id": "Warehouse_240219_GoPro_7_GX070600_100_3_2",
244
+ "video": "Warehouse_240219_GoPro_7_GX070600_100_3_2.mp4",
245
+ "system_prompt": "You are a warehouse monitoring system analyzing video footage. Your task is to answer safety and compliance questions strictly with \"Yes\" or \"No\".\nThe clip may not show the entire event, so rely on visible evidence. Infer from post-event evidence: \n- PPE compliance (hardhats, safety vests, etc.).\n- Path clear or obstructed for forklifts or robots.\n- Boxes stacked properly on pallets or being lifted.\n- Boxes crushed, dropped, or falling off forklifts/robots/operators.\n- Operator behavior (falling, using cell phone, throwing boxes).\n- Human safety risks (walking in front of forklift, near falling boxes, jumping from ladders).\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
246
+ "question": "Are all workers wearing PPE (hardhats and safety vests)?"
247
+ },
248
+ {
249
+ "id": "Warehouse_240219_GoPro_7_GX010600_500_2_3",
250
+ "video": "Warehouse_240219_GoPro_7_GX010600_500_2_3.mp4",
251
+ "system_prompt": "You are a warehouse monitoring system analyzing video footage. Your task is to answer safety and compliance questions strictly with \"Yes\" or \"No\".\nThe clip may not show the entire event, so rely on visible evidence. Infer from post-event evidence: \n- PPE compliance (hardhats, safety vests, etc.).\n- Path clear or obstructed for forklifts or robots.\n- Boxes stacked properly on pallets or being lifted.\n- Boxes crushed, dropped, or falling off forklifts/robots/operators.\n- Operator behavior (falling, using cell phone, throwing boxes).\n- Human safety risks (walking in front of forklift, near falling boxes, jumping from ladders).\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
252
+ "question": "Is the path obstructed for the forklift to pass?"
253
+ },
254
+ {
255
+ "id": "Warehouse_240219_GoPro_7_GX010600_500_1_4",
256
+ "video": "Warehouse_240219_GoPro_7_GX010600_500_1_4.mp4",
257
+ "system_prompt": "You are a warehouse monitoring system analyzing video footage. Your task is to answer safety and compliance questions strictly with \"Yes\" or \"No\".\nThe clip may not show the entire event, so rely on visible evidence. Infer from post-event evidence: \n- PPE compliance (hardhats, safety vests, etc.).\n- Path clear or obstructed for forklifts or robots.\n- Boxes stacked properly on pallets or being lifted.\n- Boxes crushed, dropped, or falling off forklifts/robots/operators.\n- Operator behavior (falling, using cell phone, throwing boxes).\n- Human safety risks (walking in front of forklift, near falling boxes, jumping from ladders).\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
258
+ "question": "Are the boxes properly stacked on the pallet loaded on the forklift?"
259
+ },
260
+ {
261
+ "id": "Warehouse_240219_GoPro_7_GX010600_400_1_5",
262
+ "video": "Warehouse_240219_GoPro_7_GX010600_400_1_5.mp4",
263
+ "system_prompt": "You are a warehouse monitoring system analyzing video footage. Your task is to answer safety and compliance questions strictly with \"Yes\" or \"No\".\nThe clip may not show the entire event, so rely on visible evidence. Infer from post-event evidence: \n- PPE compliance (hardhats, safety vests, etc.).\n- Path clear or obstructed for forklifts or robots.\n- Boxes stacked properly on pallets or being lifted.\n- Boxes crushed, dropped, or falling off forklifts/robots/operators.\n- Operator behavior (falling, using cell phone, throwing boxes).\n- Human safety risks (walking in front of forklift, near falling boxes, jumping from ladders).\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
264
+ "question": "Is the path obstructed for the forklift to pass?"
265
+ },
266
+ {
267
+ "id": "warehouse_1_600_4_6",
268
+ "video": "warehouse_1_600_4_6.mp4",
269
+ "system_prompt": "You are a warehouse monitoring system analyzing video footage. Your task is to answer safety and compliance questions strictly with \"Yes\" or \"No\".\nThe clip may not show the entire event, so rely on visible evidence. Infer from post-event evidence: \n- PPE compliance (hardhats, safety vests, etc.).\n- Path clear or obstructed for forklifts or robots.\n- Boxes stacked properly on pallets or being lifted.\n- Boxes crushed, dropped, or falling off forklifts/robots/operators.\n- Operator behavior (falling, using cell phone, throwing boxes).\n- Human safety risks (walking in front of forklift, near falling boxes, jumping from ladders).\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
270
+ "question": "Did anyone experience a fall or end up on the ground?"
271
+ },
272
+ {
273
+ "id": "warehouse_1_540_7",
274
+ "video": "warehouse_1_540_7.mp4",
275
+ "system_prompt": "You are a warehouse monitoring system analyzing video footage. Your task is to answer safety and compliance questions strictly with \"Yes\" or \"No\".\nThe clip may not show the entire event, so rely on visible evidence. Infer from post-event evidence: \n- PPE compliance (hardhats, safety vests, etc.).\n- Path clear or obstructed for forklifts or robots.\n- Boxes stacked properly on pallets or being lifted.\n- Boxes crushed, dropped, or falling off forklifts/robots/operators.\n- Operator behavior (falling, using cell phone, throwing boxes).\n- Human safety risks (walking in front of forklift, near falling boxes, jumping from ladders).\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
276
+ "question": "Is any person near or in close proximity to the box when it falls?"
277
+ },
278
+ {
279
+ "id": "warehouse_1_540_4_8",
280
+ "video": "warehouse_1_540_4_8.mp4",
281
+ "system_prompt": "You are a warehouse monitoring system analyzing video footage. Your task is to answer safety and compliance questions strictly with \"Yes\" or \"No\".\nThe clip may not show the entire event, so rely on visible evidence. Infer from post-event evidence: \n- PPE compliance (hardhats, safety vests, etc.).\n- Path clear or obstructed for forklifts or robots.\n- Boxes stacked properly on pallets or being lifted.\n- Boxes crushed, dropped, or falling off forklifts/robots/operators.\n- Operator behavior (falling, using cell phone, throwing boxes).\n- Human safety risks (walking in front of forklift, near falling boxes, jumping from ladders).\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
282
+ "question": "Is the operator or a person using a cell phone while working?"
283
+ },
284
+ {
285
+ "id": "warehouse_1_425_6_9",
286
+ "video": "warehouse_1_425_6_9.mp4",
287
+ "system_prompt": "You are a warehouse monitoring system analyzing video footage. Your task is to answer safety and compliance questions strictly with \"Yes\" or \"No\".\nThe clip may not show the entire event, so rely on visible evidence. Infer from post-event evidence: \n- PPE compliance (hardhats, safety vests, etc.).\n- Path clear or obstructed for forklifts or robots.\n- Boxes stacked properly on pallets or being lifted.\n- Boxes crushed, dropped, or falling off forklifts/robots/operators.\n- Operator behavior (falling, using cell phone, throwing boxes).\n- Human safety risks (walking in front of forklift, near falling boxes, jumping from ladders).\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
288
+ "question": "Is the operator or a person jumping from the ladder?"
289
+ },
290
+ {
291
+ "id": "concat_wh_52_0_0_10",
292
+ "video": "concat_wh_52_0_0_10.mp4",
293
+ "system_prompt": "You are a warehouse monitoring system analyzing video footage. Your task is to answer safety and compliance questions strictly with \"Yes\" or \"No\".\nThe clip may not show the entire event, so rely on visible evidence. Infer from post-event evidence: \n- PPE compliance (hardhats, safety vests, etc.).\n- Path clear or obstructed for forklifts or robots.\n- Boxes stacked properly on pallets or being lifted.\n- Boxes crushed, dropped, or falling off forklifts/robots/operators.\n- Operator behavior (falling, using cell phone, throwing boxes).\n- Human safety risks (walking in front of forklift, near falling boxes, jumping from ladders).\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
294
+ "question": "Does any box fall off the robot?"
295
+ },
296
+ {
297
+ "id": "warehouse_1_425_4_11",
298
+ "video": "warehouse_1_425_4_11.mp4",
299
+ "system_prompt": "You are a warehouse monitoring system analyzing video footage. Your task is to answer safety and compliance questions strictly with \"Yes\" or \"No\".\nThe clip may not show the entire event, so rely on visible evidence. Infer from post-event evidence: \n- PPE compliance (hardhats, safety vests, etc.).\n- Path clear or obstructed for forklifts or robots.\n- Boxes stacked properly on pallets or being lifted.\n- Boxes crushed, dropped, or falling off forklifts/robots/operators.\n- Operator behavior (falling, using cell phone, throwing boxes).\n- Human safety risks (walking in front of forklift, near falling boxes, jumping from ladders).\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
300
+ "question": "Are the boxes properly stacked as the operator lifts?"
301
+ },
302
+ {
303
+ "id": "warehouse_1_120_12",
304
+ "video": "warehouse_1_120_12.mp4",
305
+ "system_prompt": "You are a warehouse monitoring system analyzing video footage. Your task is to answer safety and compliance questions strictly with \"Yes\" or \"No\".\nThe clip may not show the entire event, so rely on visible evidence. Infer from post-event evidence: \n- PPE compliance (hardhats, safety vests, etc.).\n- Path clear or obstructed for forklifts or robots.\n- Boxes stacked properly on pallets or being lifted.\n- Boxes crushed, dropped, or falling off forklifts/robots/operators.\n- Operator behavior (falling, using cell phone, throwing boxes).\n- Human safety risks (walking in front of forklift, near falling boxes, jumping from ladders).\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
306
+ "question": "Does the operator throw any boxes?"
307
+ },
308
+ {
309
+ "id": "concat_wh_52_0_5_13",
310
+ "video": "concat_wh_52_0_5_13.mp4",
311
+ "system_prompt": "You are a warehouse monitoring system analyzing video footage. Your task is to answer safety and compliance questions strictly with \"Yes\" or \"No\".\nThe clip may not show the entire event, so rely on visible evidence. Infer from post-event evidence: \n- PPE compliance (hardhats, safety vests, etc.).\n- Path clear or obstructed for forklifts or robots.\n- Boxes stacked properly on pallets or being lifted.\n- Boxes crushed, dropped, or falling off forklifts/robots/operators.\n- Operator behavior (falling, using cell phone, throwing boxes).\n- Human safety risks (walking in front of forklift, near falling boxes, jumping from ladders).\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
312
+ "question": "Does a box fall off the robot?"
313
+ },
314
+ {
315
+ "id": "concat_wh_52_300_0_14",
316
+ "video": "concat_wh_52_300_0_14.mp4",
317
+ "system_prompt": "You are a warehouse monitoring system analyzing video footage. Your task is to answer safety and compliance questions strictly with \"Yes\" or \"No\".\nThe clip may not show the entire event, so rely on visible evidence. Infer from post-event evidence: \n- PPE compliance (hardhats, safety vests, etc.).\n- Path clear or obstructed for forklifts or robots.\n- Boxes stacked properly on pallets or being lifted.\n- Boxes crushed, dropped, or falling off forklifts/robots/operators.\n- Operator behavior (falling, using cell phone, throwing boxes).\n- Human safety risks (walking in front of forklift, near falling boxes, jumping from ladders).\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
318
+ "question": "Does anyone walk in front of the forklift?"
319
+ },
320
+ {
321
+ "id": "concat_wh_52_300_1_15",
322
+ "video": "concat_wh_52_300_1_15.mp4",
323
+ "system_prompt": "You are a warehouse monitoring system analyzing video footage. Your task is to answer safety and compliance questions strictly with \"Yes\" or \"No\".\nThe clip may not show the entire event, so rely on visible evidence. Infer from post-event evidence: \n- PPE compliance (hardhats, safety vests, etc.).\n- Path clear or obstructed for forklifts or robots.\n- Boxes stacked properly on pallets or being lifted.\n- Boxes crushed, dropped, or falling off forklifts/robots/operators.\n- Operator behavior (falling, using cell phone, throwing boxes).\n- Human safety risks (walking in front of forklift, near falling boxes, jumping from ladders).\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
324
+ "question": "Does anyone walk in front of the forklift?"
325
+ },
326
+ {
327
+ "id": "concat_wh_52_300_2_16",
328
+ "video": "concat_wh_52_300_2_16.mp4",
329
+ "system_prompt": "You are a warehouse monitoring system analyzing video footage. Your task is to answer safety and compliance questions strictly with \"Yes\" or \"No\".\nThe clip may not show the entire event, so rely on visible evidence. Infer from post-event evidence: \n- PPE compliance (hardhats, safety vests, etc.).\n- Path clear or obstructed for forklifts or robots.\n- Boxes stacked properly on pallets or being lifted.\n- Boxes crushed, dropped, or falling off forklifts/robots/operators.\n- Operator behavior (falling, using cell phone, throwing boxes).\n- Human safety risks (walking in front of forklift, near falling boxes, jumping from ladders).\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
330
+ "question": "Is the path of the forklift clear?"
331
+ },
332
+ {
333
+ "id": "concat_wh_52_300_2_17",
334
+ "video": "concat_wh_52_300_2_17.mp4",
335
+ "system_prompt": "You are a warehouse monitoring system analyzing video footage. Your task is to answer safety and compliance questions strictly with \"Yes\" or \"No\".\nThe clip may not show the entire event, so rely on visible evidence. Infer from post-event evidence: \n- PPE compliance (hardhats, safety vests, etc.).\n- Path clear or obstructed for forklifts or robots.\n- Boxes stacked properly on pallets or being lifted.\n- Boxes crushed, dropped, or falling off forklifts/robots/operators.\n- Operator behavior (falling, using cell phone, throwing boxes).\n- Human safety risks (walking in front of forklift, near falling boxes, jumping from ladders).\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
336
+ "question": "Are the boxes properly stacked on the pallet that is loaded on the forklift?"
337
+ },
338
+ {
339
+ "id": "concat_wh_52_300_1_18",
340
+ "video": "concat_wh_52_300_1_18.mp4",
341
+ "system_prompt": "You are a warehouse monitoring system analyzing video footage. Your task is to answer safety and compliance questions strictly with \"Yes\" or \"No\".\nThe clip may not show the entire event, so rely on visible evidence. Infer from post-event evidence: \n- PPE compliance (hardhats, safety vests, etc.).\n- Path clear or obstructed for forklifts or robots.\n- Boxes stacked properly on pallets or being lifted.\n- Boxes crushed, dropped, or falling off forklifts/robots/operators.\n- Operator behavior (falling, using cell phone, throwing boxes).\n- Human safety risks (walking in front of forklift, near falling boxes, jumping from ladders).\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
342
+ "question": "Are all workers wearing PPE?"
343
+ },
344
+ {
345
+ "id": "concat_wh_52_300_3_19",
346
+ "video": "concat_wh_52_300_3_19.mp4",
347
+ "system_prompt": "You are a warehouse monitoring system analyzing video footage. Your task is to answer safety and compliance questions strictly with \"Yes\" or \"No\".\nThe clip may not show the entire event, so rely on visible evidence. Infer from post-event evidence: \n- PPE compliance (hardhats, safety vests, etc.).\n- Path clear or obstructed for forklifts or robots.\n- Boxes stacked properly on pallets or being lifted.\n- Boxes crushed, dropped, or falling off forklifts/robots/operators.\n- Operator behavior (falling, using cell phone, throwing boxes).\n- Human safety risks (walking in front of forklift, near falling boxes, jumping from ladders).\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
348
+ "question": "Are the boxes properly stacked on the pallet that is loaded on the forklift?"
349
+ },
350
+ {
351
+ "id": "concat_wh_52_1890_0_20",
352
+ "video": "concat_wh_52_1890_0_20.mp4",
353
+ "system_prompt": "You are a warehouse monitoring system analyzing video footage. Your task is to answer safety and compliance questions strictly with \"Yes\" or \"No\".\nThe clip may not show the entire event, so rely on visible evidence. Infer from post-event evidence: \n- PPE compliance (hardhats, safety vests, etc.).\n- Path clear or obstructed for forklifts or robots.\n- Boxes stacked properly on pallets or being lifted.\n- Boxes crushed, dropped, or falling off forklifts/robots/operators.\n- Operator behavior (falling, using cell phone, throwing boxes).\n- Human safety risks (walking in front of forklift, near falling boxes, jumping from ladders).\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
354
+ "question": "Are all workers wearing PPE?"
355
+ },
356
+ {
357
+ "id": "concat_wh_52_1890_4_21",
358
+ "video": "concat_wh_52_1890_4_21.mp4",
359
+ "system_prompt": "You are a warehouse monitoring system analyzing video footage. Your task is to answer safety and compliance questions strictly with \"Yes\" or \"No\".\nThe clip may not show the entire event, so rely on visible evidence. Infer from post-event evidence: \n- PPE compliance (hardhats, safety vests, etc.).\n- Path clear or obstructed for forklifts or robots.\n- Boxes stacked properly on pallets or being lifted.\n- Boxes crushed, dropped, or falling off forklifts/robots/operators.\n- Operator behavior (falling, using cell phone, throwing boxes).\n- Human safety risks (walking in front of forklift, near falling boxes, jumping from ladders).\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
360
+ "question": "Are any boxes crushed?"
361
+ },
362
+ {
363
+ "id": "concat_wh_52_1890_4_22",
364
+ "video": "concat_wh_52_1890_4_22.mp4",
365
+ "system_prompt": "You are a warehouse monitoring system analyzing video footage. Your task is to answer safety and compliance questions strictly with \"Yes\" or \"No\".\nThe clip may not show the entire event, so rely on visible evidence. Infer from post-event evidence: \n- PPE compliance (hardhats, safety vests, etc.).\n- Path clear or obstructed for forklifts or robots.\n- Boxes stacked properly on pallets or being lifted.\n- Boxes crushed, dropped, or falling off forklifts/robots/operators.\n- Operator behavior (falling, using cell phone, throwing boxes).\n- Human safety risks (walking in front of forklift, near falling boxes, jumping from ladders).\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
366
+ "question": "Do any boxes get dropped?"
367
+ },
368
+ {
369
+ "id": "concat_wh_52_1890_5_23",
370
+ "video": "concat_wh_52_1890_5_23.mp4",
371
+ "system_prompt": "You are a warehouse monitoring system analyzing video footage. Your task is to answer safety and compliance questions strictly with \"Yes\" or \"No\".\nThe clip may not show the entire event, so rely on visible evidence. Infer from post-event evidence: \n- PPE compliance (hardhats, safety vests, etc.).\n- Path clear or obstructed for forklifts or robots.\n- Boxes stacked properly on pallets or being lifted.\n- Boxes crushed, dropped, or falling off forklifts/robots/operators.\n- Operator behavior (falling, using cell phone, throwing boxes).\n- Human safety risks (walking in front of forklift, near falling boxes, jumping from ladders).\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
372
+ "question": "Are any boxes crushed?"
373
+ },
374
+ {
375
+ "id": "concat_wh_52_1890_5_24",
376
+ "video": "concat_wh_52_1890_5_24.mp4",
377
+ "system_prompt": "You are a warehouse monitoring system analyzing video footage. Your task is to answer safety and compliance questions strictly with \"Yes\" or \"No\".\nThe clip may not show the entire event, so rely on visible evidence. Infer from post-event evidence: \n- PPE compliance (hardhats, safety vests, etc.).\n- Path clear or obstructed for forklifts or robots.\n- Boxes stacked properly on pallets or being lifted.\n- Boxes crushed, dropped, or falling off forklifts/robots/operators.\n- Operator behavior (falling, using cell phone, throwing boxes).\n- Human safety risks (walking in front of forklift, near falling boxes, jumping from ladders).\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
378
+ "question": "Do any boxes get dropped?"
379
+ },
380
+ {
381
+ "id": "concat_wh_52_1890_9_25",
382
+ "video": "concat_wh_52_1890_9_25.mp4",
383
+ "system_prompt": "You are a warehouse monitoring system analyzing video footage. Your task is to answer safety and compliance questions strictly with \"Yes\" or \"No\".\nThe clip may not show the entire event, so rely on visible evidence. Infer from post-event evidence: \n- PPE compliance (hardhats, safety vests, etc.).\n- Path clear or obstructed for forklifts or robots.\n- Boxes stacked properly on pallets or being lifted.\n- Boxes crushed, dropped, or falling off forklifts/robots/operators.\n- Operator behavior (falling, using cell phone, throwing boxes).\n- Human safety risks (walking in front of forklift, near falling boxes, jumping from ladders).\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
384
+ "question": "Is everyone wearing a hardhat and safety vest?"
385
+ },
386
+ {
387
+ "id": "concat_wh_52_2925_1_26",
388
+ "video": "concat_wh_52_2925_1_26.mp4",
389
+ "system_prompt": "You are a warehouse monitoring system analyzing video footage. Your task is to answer safety and compliance questions strictly with \"Yes\" or \"No\".\nThe clip may not show the entire event, so rely on visible evidence. Infer from post-event evidence: \n- PPE compliance (hardhats, safety vests, etc.).\n- Path clear or obstructed for forklifts or robots.\n- Boxes stacked properly on pallets or being lifted.\n- Boxes crushed, dropped, or falling off forklifts/robots/operators.\n- Operator behavior (falling, using cell phone, throwing boxes).\n- Human safety risks (walking in front of forklift, near falling boxes, jumping from ladders).\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
390
+ "question": "Do any boxes get dropped?"
391
+ },
392
+ {
393
+ "id": "concat_wh_52_2925_27",
394
+ "video": "concat_wh_52_2925_27.mp4",
395
+ "system_prompt": "You are a warehouse monitoring system analyzing video footage. Your task is to answer safety and compliance questions strictly with \"Yes\" or \"No\".\nThe clip may not show the entire event, so rely on visible evidence. Infer from post-event evidence: \n- PPE compliance (hardhats, safety vests, etc.).\n- Path clear or obstructed for forklifts or robots.\n- Boxes stacked properly on pallets or being lifted.\n- Boxes crushed, dropped, or falling off forklifts/robots/operators.\n- Operator behavior (falling, using cell phone, throwing boxes).\n- Human safety risks (walking in front of forklift, near falling boxes, jumping from ladders).\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
396
+ "question": "Is anything blocking the path of the small yellow robot?"
397
+ },
398
+ {
399
+ "id": "concat_wh_52_2925_28",
400
+ "video": "concat_wh_52_2925_28.mp4",
401
+ "system_prompt": "You are a warehouse monitoring system analyzing video footage. Your task is to answer safety and compliance questions strictly with \"Yes\" or \"No\".\nThe clip may not show the entire event, so rely on visible evidence. Infer from post-event evidence: \n- PPE compliance (hardhats, safety vests, etc.).\n- Path clear or obstructed for forklifts or robots.\n- Boxes stacked properly on pallets or being lifted.\n- Boxes crushed, dropped, or falling off forklifts/robots/operators.\n- Operator behavior (falling, using cell phone, throwing boxes).\n- Human safety risks (walking in front of forklift, near falling boxes, jumping from ladders).\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
402
+ "question": "Is anything blocking the path of the forklift?"
403
+ }
404
+ ]
data/event_verification/data_jsons/annotations/tailgating_location_a.json ADDED
@@ -0,0 +1,170 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ [
2
+ {
3
+ "id": "10_15_2025_sp_8_35_08_sp_PM_sp__lp_UTC-07_00_rp_",
4
+ "video": "10_15_2025_sp_8_35_08_sp_PM_sp__lp_UTC-07_00_rp_.mp4",
5
+ "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
6
+ "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
7
+ },
8
+ {
9
+ "id": "11_20_2025_sp_4_13_08_sp_PM_sp__lp_UTC-08_00_rp_",
10
+ "video": "11_20_2025_sp_4_13_08_sp_PM_sp__lp_UTC-08_00_rp_.mp4",
11
+ "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
12
+ "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
13
+ },
14
+ {
15
+ "id": "11_24_2025_sp_9_44_18_sp_AM_sp__lp_UTC-08_00_rp_",
16
+ "video": "11_24_2025_sp_9_44_18_sp_AM_sp__lp_UTC-08_00_rp_.mp4",
17
+ "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
18
+ "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
19
+ },
20
+ {
21
+ "id": "11_20_2025_sp_1_01_55_sp_PM_sp__lp_UTC-08_00_rp_",
22
+ "video": "11_20_2025_sp_1_01_55_sp_PM_sp__lp_UTC-08_00_rp_.mp4",
23
+ "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
24
+ "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
25
+ },
26
+ {
27
+ "id": "10_25_2025_sp_6_30_25_sp_PM_sp__lp_UTC-07_00_rp_",
28
+ "video": "10_25_2025_sp_6_30_25_sp_PM_sp__lp_UTC-07_00_rp_.mp4",
29
+ "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
30
+ "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
31
+ },
32
+ {
33
+ "id": "10_15_2025_sp_8_38_19_sp_PM_sp__lp_UTC-07_00_rp_",
34
+ "video": "10_15_2025_sp_8_38_19_sp_PM_sp__lp_UTC-07_00_rp_.mp4",
35
+ "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
36
+ "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
37
+ },
38
+ {
39
+ "id": "10_8_2025_sp_8_38_03_sp_PM_sp__lp_UTC-07_00_rp_",
40
+ "video": "10_8_2025_sp_8_38_03_sp_PM_sp__lp_UTC-07_00_rp_.mp4",
41
+ "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
42
+ "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
43
+ },
44
+ {
45
+ "id": "10_25_2025_sp_6_09_05_sp_PM_sp__lp_UTC-07_00_rp_",
46
+ "video": "10_25_2025_sp_6_09_05_sp_PM_sp__lp_UTC-07_00_rp_.mp4",
47
+ "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
48
+ "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
49
+ },
50
+ {
51
+ "id": "10_25_2025_sp_6_46_58_sp_PM_sp__lp_UTC-07_00_rp_",
52
+ "video": "10_25_2025_sp_6_46_58_sp_PM_sp__lp_UTC-07_00_rp_.mp4",
53
+ "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
54
+ "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
55
+ },
56
+ {
57
+ "id": "11_24_2025_sp_10_23_17_sp_AM_sp__lp_UTC-08_00_rp_",
58
+ "video": "11_24_2025_sp_10_23_17_sp_AM_sp__lp_UTC-08_00_rp_.mp4",
59
+ "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
60
+ "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
61
+ },
62
+ {
63
+ "id": "10_9_2025_sp_8_48_30_sp_PM_sp__lp_UTC-07_00_rp_",
64
+ "video": "10_9_2025_sp_8_48_30_sp_PM_sp__lp_UTC-07_00_rp_.mp4",
65
+ "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
66
+ "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
67
+ },
68
+ {
69
+ "id": "10_8_2025_sp_8_43_54_sp_PM_sp__lp_UTC-07_00_rp_",
70
+ "video": "10_8_2025_sp_8_43_54_sp_PM_sp__lp_UTC-07_00_rp_.mp4",
71
+ "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
72
+ "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
73
+ },
74
+ {
75
+ "id": "11_21_2025_sp_11_56_03_sp_AM_sp__lp_UTC-08_00_rp_",
76
+ "video": "11_21_2025_sp_11_56_03_sp_AM_sp__lp_UTC-08_00_rp_.mp4",
77
+ "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
78
+ "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
79
+ },
80
+ {
81
+ "id": "10_16_2025_sp_9_00_13_sp_PM_sp__lp_UTC-07_00_rp_",
82
+ "video": "10_16_2025_sp_9_00_13_sp_PM_sp__lp_UTC-07_00_rp_.mp4",
83
+ "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
84
+ "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
85
+ },
86
+ {
87
+ "id": "10_25_2025_sp_6_48_55_sp_PM_sp__lp_UTC-07_00_rp_",
88
+ "video": "10_25_2025_sp_6_48_55_sp_PM_sp__lp_UTC-07_00_rp_.mp4",
89
+ "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
90
+ "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
91
+ },
92
+ {
93
+ "id": "10_25_2025_sp_6_12_31_sp_PM_sp__lp_UTC-07_00_rp_",
94
+ "video": "10_25_2025_sp_6_12_31_sp_PM_sp__lp_UTC-07_00_rp_.mp4",
95
+ "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
96
+ "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
97
+ },
98
+ {
99
+ "id": "10_16_2025_sp_9_10_29_sp_PM_sp__lp_UTC-07_00_rp_",
100
+ "video": "10_16_2025_sp_9_10_29_sp_PM_sp__lp_UTC-07_00_rp_.mp4",
101
+ "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
102
+ "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
103
+ },
104
+ {
105
+ "id": "10_15_2025_sp_8_39_16_sp_PM_sp__lp_UTC-07_00_rp_",
106
+ "video": "10_15_2025_sp_8_39_16_sp_PM_sp__lp_UTC-07_00_rp_.mp4",
107
+ "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
108
+ "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
109
+ },
110
+ {
111
+ "id": "11_24_2025_sp_10_44_28_sp_AM_sp__lp_UTC-08_00_rp_",
112
+ "video": "11_24_2025_sp_10_44_28_sp_AM_sp__lp_UTC-08_00_rp_.mp4",
113
+ "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
114
+ "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
115
+ },
116
+ {
117
+ "id": "11_24_2025_sp_1_28_55_sp_PM_sp__lp_UTC-08_00_rp_",
118
+ "video": "11_24_2025_sp_1_28_55_sp_PM_sp__lp_UTC-08_00_rp_.mp4",
119
+ "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
120
+ "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
121
+ },
122
+ {
123
+ "id": "10_25_2025_sp_6_32_48_sp_PM_sp__lp_UTC-07_00_rp_",
124
+ "video": "10_25_2025_sp_6_32_48_sp_PM_sp__lp_UTC-07_00_rp_.mp4",
125
+ "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
126
+ "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
127
+ },
128
+ {
129
+ "id": "11_21_2025_sp_11_40_45_sp_AM_sp__lp_UTC-08_00_rp_",
130
+ "video": "11_21_2025_sp_11_40_45_sp_AM_sp__lp_UTC-08_00_rp_.mp4",
131
+ "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
132
+ "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
133
+ },
134
+ {
135
+ "id": "10_25_2025_sp_6_15_08_sp_PM_sp__lp_UTC-07_00_rp_",
136
+ "video": "10_25_2025_sp_6_15_08_sp_PM_sp__lp_UTC-07_00_rp_.mp4",
137
+ "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
138
+ "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
139
+ },
140
+ {
141
+ "id": "10_25_2025_sp_6_22_57_sp_PM_sp__lp_UTC-07_00_rp_",
142
+ "video": "10_25_2025_sp_6_22_57_sp_PM_sp__lp_UTC-07_00_rp_.mp4",
143
+ "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
144
+ "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
145
+ },
146
+ {
147
+ "id": "11_21_2025_sp_11_55_17_sp_AM_sp__lp_UTC-08_00_rp_",
148
+ "video": "11_21_2025_sp_11_55_17_sp_AM_sp__lp_UTC-08_00_rp_.mp4",
149
+ "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
150
+ "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
151
+ },
152
+ {
153
+ "id": "10_9_2025_sp_8_51_57_sp_PM_sp__lp_UTC-07_00_rp_",
154
+ "video": "10_9_2025_sp_8_51_57_sp_PM_sp__lp_UTC-07_00_rp_.mp4",
155
+ "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
156
+ "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
157
+ },
158
+ {
159
+ "id": "11_21_2025_sp_11_18_34_sp_AM_sp__lp_UTC-08_00_rp_",
160
+ "video": "11_21_2025_sp_11_18_34_sp_AM_sp__lp_UTC-08_00_rp_.mp4",
161
+ "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
162
+ "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
163
+ },
164
+ {
165
+ "id": "11_24_2025_sp_2_57_33_sp_PM_sp__lp_UTC-08_00_rp_",
166
+ "video": "11_24_2025_sp_2_57_33_sp_PM_sp__lp_UTC-08_00_rp_.mp4",
167
+ "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
168
+ "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
169
+ }
170
+ ]
data/event_verification/data_jsons/annotations/tailgating_location_b.json ADDED
@@ -0,0 +1,134 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ [
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+ {
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+ "id": "evs_6a52f11dad",
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+ "video": "evs_6a52f11dad.mp4",
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+ "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
6
+ "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
7
+ },
8
+ {
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+ "id": "evs_b561420691",
10
+ "video": "evs_b561420691.mp4",
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+ "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
12
+ "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
13
+ },
14
+ {
15
+ "id": "evs_907fe737cf",
16
+ "video": "evs_907fe737cf.mp4",
17
+ "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
18
+ "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
19
+ },
20
+ {
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+ "id": "evs_0ea91247d8",
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+ "video": "evs_0ea91247d8.mp4",
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+ "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
24
+ "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
25
+ },
26
+ {
27
+ "id": "evs_6ad1a891ad",
28
+ "video": "evs_6ad1a891ad.mp4",
29
+ "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
30
+ "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
31
+ },
32
+ {
33
+ "id": "evs_d0e459f682",
34
+ "video": "evs_d0e459f682.mp4",
35
+ "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
36
+ "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
37
+ },
38
+ {
39
+ "id": "evs_2e30648c0a",
40
+ "video": "evs_2e30648c0a.mp4",
41
+ "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
42
+ "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
43
+ },
44
+ {
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+ "id": "evs_292daa255e",
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+ "video": "evs_292daa255e.mp4",
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+ "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
48
+ "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
49
+ },
50
+ {
51
+ "id": "evs_a9e180fff3",
52
+ "video": "evs_a9e180fff3.mp4",
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+ "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
54
+ "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
55
+ },
56
+ {
57
+ "id": "evs_53f64ccbe8",
58
+ "video": "evs_53f64ccbe8.mp4",
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+ "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
60
+ "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
61
+ },
62
+ {
63
+ "id": "evs_b982d3f339",
64
+ "video": "evs_b982d3f339.mp4",
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+ "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
66
+ "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
67
+ },
68
+ {
69
+ "id": "evs_03018e0ecf",
70
+ "video": "evs_03018e0ecf.mp4",
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+ "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
72
+ "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
73
+ },
74
+ {
75
+ "id": "evs_bf746e9608",
76
+ "video": "evs_bf746e9608.mp4",
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+ "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
78
+ "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
79
+ },
80
+ {
81
+ "id": "evs_6e738337bc",
82
+ "video": "evs_6e738337bc.mp4",
83
+ "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
84
+ "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
85
+ },
86
+ {
87
+ "id": "evs_f979eb0318",
88
+ "video": "evs_f979eb0318.mp4",
89
+ "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
90
+ "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
91
+ },
92
+ {
93
+ "id": "evs_024ae78480",
94
+ "video": "evs_024ae78480.mp4",
95
+ "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
96
+ "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
97
+ },
98
+ {
99
+ "id": "evs_fa68a5a4f8",
100
+ "video": "evs_fa68a5a4f8.mp4",
101
+ "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
102
+ "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
103
+ },
104
+ {
105
+ "id": "evs_eed8192951",
106
+ "video": "evs_eed8192951.mp4",
107
+ "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
108
+ "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
109
+ },
110
+ {
111
+ "id": "evs_32231b0bd6",
112
+ "video": "evs_32231b0bd6.mp4",
113
+ "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
114
+ "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
115
+ },
116
+ {
117
+ "id": "evs_a713802c9d",
118
+ "video": "evs_a713802c9d.mp4",
119
+ "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
120
+ "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
121
+ },
122
+ {
123
+ "id": "evs_3f674e8c19",
124
+ "video": "evs_3f674e8c19.mp4",
125
+ "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
126
+ "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
127
+ },
128
+ {
129
+ "id": "evs_6a4da56832",
130
+ "video": "evs_6a4da56832.mp4",
131
+ "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
132
+ "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
133
+ }
134
+ ]
data/event_verification/data_jsons/annotations/warehouse_near_miss.json ADDED
@@ -0,0 +1,278 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ [
2
+ {
3
+ "id": "scene_07_01_00-23-52_to_00-25-33_GoPro1_Fork_Lift_stopped_while_person_crossing_the_isle_08-22",
4
+ "video": "scene_07_01_00-23-52_to_00-25-33_GoPro1_Fork_Lift_stopped_while_person_crossing_the_isle_08-22.mp4",
5
+ "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
6
+ "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
7
+ },
8
+ {
9
+ "id": "scene_08_01_00-00-46_to_00-02-20_GoPro1_Fork_Lift_crossing_while_person_running_in_front_of_it_01-15",
10
+ "video": "scene_08_01_00-00-46_to_00-02-20_GoPro1_Fork_Lift_crossing_while_person_running_in_front_of_it_01-15.mp4",
11
+ "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
12
+ "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
13
+ },
14
+ {
15
+ "id": "scene_08_02_00-02-20_to_00-04-56_GoPro1_Fork_Lift_crossing_while_person_running_in_front_of_it_08-22",
16
+ "video": "scene_08_02_00-02-20_to_00-04-56_GoPro1_Fork_Lift_crossing_while_person_running_in_front_of_it_08-22.mp4",
17
+ "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
18
+ "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
19
+ },
20
+ {
21
+ "id": "scene_08_03_00-04-56_to_00-08-15_GoPro1_Fork_Lift_crossing_while_person_running_in_front_of_it_04-18",
22
+ "video": "scene_08_03_00-04-56_to_00-08-15_GoPro1_Fork_Lift_crossing_while_person_running_in_front_of_it_04-18.mp4",
23
+ "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
24
+ "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
25
+ },
26
+ {
27
+ "id": "scene_09_01_00-08-15_to_00-10-22_GoPro1_Fork_Lift_moving_while_person_on_the_phone_crossing_the_isle_06-20",
28
+ "video": "scene_09_01_00-08-15_to_00-10-22_GoPro1_Fork_Lift_moving_while_person_on_the_phone_crossing_the_isle_06-20.mp4",
29
+ "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
30
+ "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
31
+ },
32
+ {
33
+ "id": "scene_10_01_00-10-22_to_00-13-12_GoPro1_Fork_Lift_moving_while_person_crossing_the_isle_06-20",
34
+ "video": "scene_10_01_00-10-22_to_00-13-12_GoPro1_Fork_Lift_moving_while_person_crossing_the_isle_06-20.mp4",
35
+ "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
36
+ "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
37
+ },
38
+ {
39
+ "id": "scene_11_01_00-13-12_to_00-16-16_GoPro1_Fork_Lift_moving_while_multiple_people_in_the_scene_04-22",
40
+ "video": "scene_11_01_00-13-12_to_00-16-16_GoPro1_Fork_Lift_moving_while_multiple_people_in_the_scene_04-22.mp4",
41
+ "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
42
+ "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
43
+ },
44
+ {
45
+ "id": "scene_12_01_00-16-16_to_00-17-31_GoPro1_Fork_Lift_moving_while_person_walking_behind_the_forklift_06-20",
46
+ "video": "scene_12_01_00-16-16_to_00-17-31_GoPro1_Fork_Lift_moving_while_person_walking_behind_the_forklift_06-20.mp4",
47
+ "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
48
+ "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
49
+ },
50
+ {
51
+ "id": "scene_12_02_00-17-31_to_00-19-50_GoPro1_Fork_Lift_moving_while_person_walking_behind_the_forklift_02-16",
52
+ "video": "scene_12_02_00-17-31_to_00-19-50_GoPro1_Fork_Lift_moving_while_person_walking_behind_the_forklift_02-16.mp4",
53
+ "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
54
+ "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
55
+ },
56
+ {
57
+ "id": "scene_14_01_00-19-50_to_00-22-54_GoPro1_Fork_Lift_moving_while_person_walking_behind_the_forklift_04-18",
58
+ "video": "scene_14_01_00-19-50_to_00-22-54_GoPro1_Fork_Lift_moving_while_person_walking_behind_the_forklift_04-18.mp4",
59
+ "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
60
+ "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
61
+ },
62
+ {
63
+ "id": "scene_16_01_00-22-54_to_00-25-38_GoPro1_person_walking_in_front_of_fork_lift_04-48",
64
+ "video": "scene_16_01_00-22-54_to_00-25-38_GoPro1_person_walking_in_front_of_fork_lift_04-48.mp4",
65
+ "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
66
+ "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
67
+ },
68
+ {
69
+ "id": "scene_17_01_00-25-38_to_00-27-32_GoPro1_person_running_in_front_of_fork_lift_02-16",
70
+ "video": "scene_17_01_00-25-38_to_00-27-32_GoPro1_person_running_in_front_of_fork_lift_02-16.mp4",
71
+ "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
72
+ "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
73
+ },
74
+ {
75
+ "id": "scene_17_02_00-27-32_to_00-30-55_GoPro1_person_running_in_front_of_fork_lift_02-26",
76
+ "video": "scene_17_02_00-27-32_to_00-30-55_GoPro1_person_running_in_front_of_fork_lift_02-26.mp4",
77
+ "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
78
+ "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
79
+ },
80
+ {
81
+ "id": "scene_18_01_00-30-55_to_00-33-57_GoPro1_person_jumping_to_not_get_hit_by_the_forklift_00-20",
82
+ "video": "scene_18_01_00-30-55_to_00-33-57_GoPro1_person_jumping_to_not_get_hit_by_the_forklift_00-20.mp4",
83
+ "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
84
+ "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
85
+ },
86
+ {
87
+ "id": "scene_19_01_00-33-57_to_00-35-41_GoPro1_fork_lift_moving_backwards_person_cutting_in_front_of_the_fo_04-24",
88
+ "video": "scene_19_01_00-33-57_to_00-35-41_GoPro1_fork_lift_moving_backwards_person_cutting_in_front_of_the_fo_04-24.mp4",
89
+ "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
90
+ "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
91
+ },
92
+ {
93
+ "id": "scene_20_01_00-35-41_to_00-37-23_GoPro1_fork_lift_going_backwards_person_running_passed_04-22",
94
+ "video": "scene_20_01_00-35-41_to_00-37-23_GoPro1_fork_lift_going_backwards_person_running_passed_04-22.mp4",
95
+ "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
96
+ "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
97
+ },
98
+ {
99
+ "id": "scene_21_01_00-37-23_to_00-39-30_GoPro1_fork_lift_going_backwards_person_stops_06-24",
100
+ "video": "scene_21_01_00-37-23_to_00-39-30_GoPro1_fork_lift_going_backwards_person_stops_06-24.mp4",
101
+ "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
102
+ "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
103
+ },
104
+ {
105
+ "id": "scene_22_01_00-39-30_to_00-45-36_GoPro1_fork_lift_moving_person_hesitating_and_stepping_back_01-20",
106
+ "video": "scene_22_01_00-39-30_to_00-45-36_GoPro1_fork_lift_moving_person_hesitating_and_stepping_back_01-20.mp4",
107
+ "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
108
+ "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
109
+ },
110
+ {
111
+ "id": "scene_23_01_00-45-36_to_00-49-03_GoPro1_boxes_blocking_the_view_of_the_driver_and_person_crossing_06-26",
112
+ "video": "scene_23_01_00-45-36_to_00-49-03_GoPro1_boxes_blocking_the_view_of_the_driver_and_person_crossing_06-26.mp4",
113
+ "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
114
+ "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
115
+ },
116
+ {
117
+ "id": "scene_25_01_00-02-02_to_00-05-05_GoPro1_person_working_on_boxes_while_fork_lift_approaches_06-30",
118
+ "video": "scene_25_01_00-02-02_to_00-05-05_GoPro1_person_working_on_boxes_while_fork_lift_approaches_06-30.mp4",
119
+ "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
120
+ "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
121
+ },
122
+ {
123
+ "id": "scene_26_01_00-05-05_to_00-08-50_GoPro1_same_as_above_person_jumping_05-24",
124
+ "video": "scene_26_01_00-05-05_to_00-08-50_GoPro1_same_as_above_person_jumping_05-24.mp4",
125
+ "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
126
+ "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
127
+ },
128
+ {
129
+ "id": "scene_27_01_00-08-50_to_00-15-25_GoPro1_person_bending_down_fork_lift_moving_forward_10-30",
130
+ "video": "scene_27_01_00-08-50_to_00-15-25_GoPro1_person_bending_down_fork_lift_moving_forward_10-30.mp4",
131
+ "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
132
+ "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
133
+ },
134
+ {
135
+ "id": "Scene_13_S13T1_C2_CS_S13T1_1-12-11-59_chunk_5__event_005_5",
136
+ "video": "Scene_13_S13T1_C2_CS_S13T1_1-12-11-59_chunk_5__event_005_5.mp4",
137
+ "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
138
+ "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
139
+ },
140
+ {
141
+ "id": "Scene_13_S13T3_C5_AS_S13T3_01-18-12-10_chunk_2__event_001_1",
142
+ "video": "Scene_13_S13T3_C5_AS_S13T3_01-18-12-10_chunk_2__event_001_1.mp4",
143
+ "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
144
+ "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
145
+ },
146
+ {
147
+ "id": "Scene_13_S13T4_C4_AS_S13T4_1-12-12-28_chunk_5__event_008_8",
148
+ "video": "Scene_13_S13T4_C4_AS_S13T4_1-12-12-28_chunk_5__event_008_8.mp4",
149
+ "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
150
+ "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
151
+ },
152
+ {
153
+ "id": "Scene_13_S13T4_C4_AS_S13T4_1-12-12-28_chunk_6__event_001_1",
154
+ "video": "Scene_13_S13T4_C4_AS_S13T4_1-12-12-28_chunk_6__event_001_1.mp4",
155
+ "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
156
+ "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
157
+ },
158
+ {
159
+ "id": "Scene_13_S13T4_C5_AS_S13T4_00-58-12-14_chunk_5__event_004_4",
160
+ "video": "Scene_13_S13T4_C5_AS_S13T4_00-58-12-14_chunk_5__event_004_4.mp4",
161
+ "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
162
+ "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
163
+ },
164
+ {
165
+ "id": "Scene_13_S13T4_C6_AS_S13T4_00-43-11-59_chunk_1__event_004_4",
166
+ "video": "Scene_13_S13T4_C6_AS_S13T4_00-43-11-59_chunk_1__event_004_4.mp4",
167
+ "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
168
+ "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
169
+ },
170
+ {
171
+ "id": "Scene_13_S13T4_C6_AS_S13T4_00-43-11-59_chunk_5__event_004_4",
172
+ "video": "Scene_13_S13T4_C6_AS_S13T4_00-43-11-59_chunk_5__event_004_4.mp4",
173
+ "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
174
+ "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
175
+ },
176
+ {
177
+ "id": "Scene_13_S13T4_C6_AS_S13T4_00-43-11-59_chunk_6__event_001_1",
178
+ "video": "Scene_13_S13T4_C6_AS_S13T4_00-43-11-59_chunk_6__event_001_1.mp4",
179
+ "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
180
+ "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
181
+ },
182
+ {
183
+ "id": "Scene_13_S13T5_C2_AS_S13T5_0-51-11-39_chunk_5__event_004_4",
184
+ "video": "Scene_13_S13T5_C2_AS_S13T5_0-51-11-39_chunk_5__event_004_4.mp4",
185
+ "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
186
+ "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
187
+ },
188
+ {
189
+ "id": "Scene_13_S13T5_C3_AS_S13T5_0-53-11-38_chunk_5__event_004_4",
190
+ "video": "Scene_13_S13T5_C3_AS_S13T5_0-53-11-38_chunk_5__event_004_4.mp4",
191
+ "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
192
+ "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
193
+ },
194
+ {
195
+ "id": "Scene_13_S13T5_C4_AS_S13T5_0-53-11-39_chunk_5__event_004_4",
196
+ "video": "Scene_13_S13T5_C4_AS_S13T5_0-53-11-39_chunk_5__event_004_4.mp4",
197
+ "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
198
+ "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
199
+ },
200
+ {
201
+ "id": "Scene_13_S13T5_C6_AS_S13T5_00-29-11-15_chunk_5__event_003_3",
202
+ "video": "Scene_13_S13T5_C6_AS_S13T5_00-29-11-15_chunk_5__event_003_3.mp4",
203
+ "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
204
+ "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
205
+ },
206
+ {
207
+ "id": "Scene_4_S4T4_C2_CV_S4T4_00-54-10-48_chunk_5__event_001_1",
208
+ "video": "Scene_4_S4T4_C2_CV_S4T4_00-54-10-48_chunk_5__event_001_1.mp4",
209
+ "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
210
+ "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
211
+ },
212
+ {
213
+ "id": "Scene_4_S4T4_C4_CS_S4T4_00-54-10-48_chunk_4__event_003_3",
214
+ "video": "Scene_4_S4T4_C4_CS_S4T4_00-54-10-48_chunk_4__event_003_3.mp4",
215
+ "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
216
+ "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
217
+ },
218
+ {
219
+ "id": "Scene_4_S4T4_C6_CS_S4T4_00-54-10-48_chunk_1__event_004_4",
220
+ "video": "Scene_4_S4T4_C6_CS_S4T4_00-54-10-48_chunk_1__event_004_4.mp4",
221
+ "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
222
+ "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
223
+ },
224
+ {
225
+ "id": "Scene_4_S4T4_C6_CS_S4T4_00-54-10-48_chunk_5__event_002_2",
226
+ "video": "Scene_4_S4T4_C6_CS_S4T4_00-54-10-48_chunk_5__event_002_2.mp4",
227
+ "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
228
+ "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
229
+ },
230
+ {
231
+ "id": "scene_01_01_00-00-00_to_00-07-34_GoPro1_Calibration_with_people_walking_around_06-26",
232
+ "video": "scene_01_01_00-00-00_to_00-07-34_GoPro1_Calibration_with_people_walking_around_06-26.mp4",
233
+ "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
234
+ "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
235
+ },
236
+ {
237
+ "id": "scene_02_01_00-07-34_to_00-11-38_GoPro1_Forklifts_being_moved_out_of_the_way_06-26",
238
+ "video": "scene_02_01_00-07-34_to_00-11-38_GoPro1_Forklifts_being_moved_out_of_the_way_06-26.mp4",
239
+ "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
240
+ "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
241
+ },
242
+ {
243
+ "id": "scene_04_01_00-11-38_to_00-19-46_GoPro1_Forklift_entering_the_aisle_no_pedestrians_around_06-26",
244
+ "video": "scene_04_01_00-11-38_to_00-19-46_GoPro1_Forklift_entering_the_aisle_no_pedestrians_around_06-26.mp4",
245
+ "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
246
+ "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
247
+ },
248
+ {
249
+ "id": "scene_05_01_00-19-46_to_00-21-03_GoPro1_Fork_Lift_crossing_people_crossing_afterwards_06-26",
250
+ "video": "scene_05_01_00-19-46_to_00-21-03_GoPro1_Fork_Lift_crossing_people_crossing_afterwards_06-26.mp4",
251
+ "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
252
+ "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
253
+ },
254
+ {
255
+ "id": "scene_06_01_00-21-03_to_00-23-52_GoPro1_Fork_Lift_crossing_people_following_the_forklift_06-26",
256
+ "video": "scene_06_01_00-21-03_to_00-23-52_GoPro1_Fork_Lift_crossing_people_following_the_forklift_06-26.mp4",
257
+ "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
258
+ "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
259
+ },
260
+ {
261
+ "id": "scene_28_01_00-15-25_to_00-27-58_GoPro1_boxes_falling_04-22",
262
+ "video": "scene_28_01_00-15-25_to_00-27-58_GoPro1_boxes_falling_04-22.mp4",
263
+ "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
264
+ "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
265
+ },
266
+ {
267
+ "id": "scene_29_01_00-01-07_to_00-10-18_GoPro1_driver_picks_up_trash_00-50",
268
+ "video": "scene_29_01_00-01-07_to_00-10-18_GoPro1_driver_picks_up_trash_00-50.mp4",
269
+ "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
270
+ "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
271
+ },
272
+ {
273
+ "id": "scene_29_01_00-09-27_to_00-12-53_GoPro1_driver_picks_up_trash_00-20",
274
+ "video": "scene_29_01_00-09-27_to_00-12-53_GoPro1_driver_picks_up_trash_00-20.mp4",
275
+ "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
276
+ "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
277
+ }
278
+ ]
data/event_verification/filtered/metropolis_event_verification/test_annotation.json DELETED
@@ -1,406 +0,0 @@
1
- {
2
- "bcq": [
3
- {
4
- "id": "traffic_chunks/LUPZNgg5idk_13",
5
- "video": "traffic_chunks/LUPZNgg5idk_13.mp4",
6
- "system_prompt": "You are a traffic monitoring system analyzing video of a street. Determine if a collision between vehicles, or vehicle and pedestrian or vehicle and cyclist has likely occurred.\nThe clip may not show the exact moment of impact, so use post-event evidence such as:\n- Vehicles in contact or showing visible damage (dents, debris, smoke, broken parts).\n- Pedestrian or cyclist on the ground, struck, or showing clear signs of impact or distress.. \n- Abnormal positions (intersecting, facing opposite directions, one against the side/rear of another).\n- Stationary vehicles remaining in contact or stopped in unnatural alignment.\n- Behavior inconsistent with normal driving (sudden halt, failure to separate, blocked motion).\n- Other unusual signs (e.g., airbags, leaking fluids, shattered glass) can also support the conclusion.\nA collision is \u201clikely\u201d if two or more independent cues strongly indicate impact, even if the collision itself is not shown. If evidence is weak or ambiguous, do not assume a collision.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
7
- "question": "Did a collision occur between two or more vehicles?"
8
- },
9
- {
10
- "id": "traffic_chunks/IpgfZf6Y2BE_14",
11
- "video": "traffic_chunks/IpgfZf6Y2BE_14.mp4",
12
- "system_prompt": "You are a traffic monitoring system analyzing video of a street. Determine if a collision between vehicles, or vehicle and pedestrian or vehicle and cyclist has likely occurred.\nThe clip may not show the exact moment of impact, so use post-event evidence such as:\n- Vehicles in contact or showing visible damage (dents, debris, smoke, broken parts).\n- Pedestrian or cyclist on the ground, struck, or showing clear signs of impact or distress.. \n- Abnormal positions (intersecting, facing opposite directions, one against the side/rear of another).\n- Stationary vehicles remaining in contact or stopped in unnatural alignment.\n- Behavior inconsistent with normal driving (sudden halt, failure to separate, blocked motion).\n- Other unusual signs (e.g., airbags, leaking fluids, shattered glass) can also support the conclusion.\nA collision is \u201clikely\u201d if two or more independent cues strongly indicate impact, even if the collision itself is not shown. If evidence is weak or ambiguous, do not assume a collision.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
13
- "question": "Did a collision occur between two or more vehicles?"
14
- },
15
- {
16
- "id": "traffic_chunks/IpgfZf6Y2BE_15",
17
- "video": "traffic_chunks/IpgfZf6Y2BE_15.mp4",
18
- "system_prompt": "You are a traffic monitoring system analyzing video of a street. Determine if a collision between vehicles, or vehicle and pedestrian or vehicle and cyclist has likely occurred.\nThe clip may not show the exact moment of impact, so use post-event evidence such as:\n- Vehicles in contact or showing visible damage (dents, debris, smoke, broken parts).\n- Pedestrian or cyclist on the ground, struck, or showing clear signs of impact or distress.. \n- Abnormal positions (intersecting, facing opposite directions, one against the side/rear of another).\n- Stationary vehicles remaining in contact or stopped in unnatural alignment.\n- Behavior inconsistent with normal driving (sudden halt, failure to separate, blocked motion).\n- Other unusual signs (e.g., airbags, leaking fluids, shattered glass) can also support the conclusion.\nA collision is \u201clikely\u201d if two or more independent cues strongly indicate impact, even if the collision itself is not shown. If evidence is weak or ambiguous, do not assume a collision.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
19
- "question": "Did a collision occur between two or more vehicles?"
20
- },
21
- {
22
- "id": "traffic_chunks/NOALQmAB4yE_16",
23
- "video": "traffic_chunks/NOALQmAB4yE_16.mp4",
24
- "system_prompt": "You are a traffic monitoring system analyzing video of a street. Determine if a collision between vehicles, or vehicle and pedestrian or vehicle and cyclist has likely occurred.\nThe clip may not show the exact moment of impact, so use post-event evidence such as:\n- Vehicles in contact or showing visible damage (dents, debris, smoke, broken parts).\n- Pedestrian or cyclist on the ground, struck, or showing clear signs of impact or distress.. \n- Abnormal positions (intersecting, facing opposite directions, one against the side/rear of another).\n- Stationary vehicles remaining in contact or stopped in unnatural alignment.\n- Behavior inconsistent with normal driving (sudden halt, failure to separate, blocked motion).\n- Other unusual signs (e.g., airbags, leaking fluids, shattered glass) can also support the conclusion.\nA collision is \u201clikely\u201d if two or more independent cues strongly indicate impact, even if the collision itself is not shown. If evidence is weak or ambiguous, do not assume a collision.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
25
- "question": "Did a vehicle collide with pedestrian?"
26
- },
27
- {
28
- "id": "traffic_chunks/SEb7p5oszeM_17",
29
- "video": "traffic_chunks/SEb7p5oszeM_17.mp4",
30
- "system_prompt": "You are a traffic monitoring system analyzing video of a street. Determine if a collision between vehicles, or vehicle and pedestrian or vehicle and cyclist has likely occurred.\nThe clip may not show the exact moment of impact, so use post-event evidence such as:\n- Vehicles in contact or showing visible damage (dents, debris, smoke, broken parts).\n- Pedestrian or cyclist on the ground, struck, or showing clear signs of impact or distress.. \n- Abnormal positions (intersecting, facing opposite directions, one against the side/rear of another).\n- Stationary vehicles remaining in contact or stopped in unnatural alignment.\n- Behavior inconsistent with normal driving (sudden halt, failure to separate, blocked motion).\n- Other unusual signs (e.g., airbags, leaking fluids, shattered glass) can also support the conclusion.\nA collision is \u201clikely\u201d if two or more independent cues strongly indicate impact, even if the collision itself is not shown. If evidence is weak or ambiguous, do not assume a collision.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
31
- "question": "Did a vehicle collide with a cyclist?"
32
- },
33
- {
34
- "id": "traffic_chunks/SEb7p5oszeM_18",
35
- "video": "traffic_chunks/SEb7p5oszeM_18.mp4",
36
- "system_prompt": "You are a traffic monitoring system analyzing video of a street. Determine if a collision between vehicles, or vehicle and pedestrian or vehicle and cyclist has likely occurred.\nThe clip may not show the exact moment of impact, so use post-event evidence such as:\n- Vehicles in contact or showing visible damage (dents, debris, smoke, broken parts).\n- Pedestrian or cyclist on the ground, struck, or showing clear signs of impact or distress.. \n- Abnormal positions (intersecting, facing opposite directions, one against the side/rear of another).\n- Stationary vehicles remaining in contact or stopped in unnatural alignment.\n- Behavior inconsistent with normal driving (sudden halt, failure to separate, blocked motion).\n- Other unusual signs (e.g., airbags, leaking fluids, shattered glass) can also support the conclusion.\nA collision is \u201clikely\u201d if two or more independent cues strongly indicate impact, even if the collision itself is not shown. If evidence is weak or ambiguous, do not assume a collision.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
37
- "question": "Did a vehicle collide with a pedestrian?"
38
- },
39
- {
40
- "id": "traffic_chunks/MmsgbcpWn-k_19",
41
- "video": "traffic_chunks/MmsgbcpWn-k_19.mp4",
42
- "system_prompt": "You are a traffic monitoring system analyzing video of a street. Determine if a collision between vehicles, or vehicle and pedestrian or vehicle and cyclist has likely occurred.\nThe clip may not show the exact moment of impact, so use post-event evidence such as:\n- Vehicles in contact or showing visible damage (dents, debris, smoke, broken parts).\n- Pedestrian or cyclist on the ground, struck, or showing clear signs of impact or distress.. \n- Abnormal positions (intersecting, facing opposite directions, one against the side/rear of another).\n- Stationary vehicles remaining in contact or stopped in unnatural alignment.\n- Behavior inconsistent with normal driving (sudden halt, failure to separate, blocked motion).\n- Other unusual signs (e.g., airbags, leaking fluids, shattered glass) can also support the conclusion.\nA collision is \u201clikely\u201d if two or more independent cues strongly indicate impact, even if the collision itself is not shown. If evidence is weak or ambiguous, do not assume a collision.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
43
- "question": "Did a collision occur between two or more vehicles?"
44
- },
45
- {
46
- "id": "traffic_chunks/MmsgbcpWn-k_20",
47
- "video": "traffic_chunks/MmsgbcpWn-k_20.mp4",
48
- "system_prompt": "You are a traffic monitoring system analyzing video of a street. Determine if a collision between vehicles, or vehicle and pedestrian or vehicle and cyclist has likely occurred.\nThe clip may not show the exact moment of impact, so use post-event evidence such as:\n- Vehicles in contact or showing visible damage (dents, debris, smoke, broken parts).\n- Pedestrian or cyclist on the ground, struck, or showing clear signs of impact or distress.. \n- Abnormal positions (intersecting, facing opposite directions, one against the side/rear of another).\n- Stationary vehicles remaining in contact or stopped in unnatural alignment.\n- Behavior inconsistent with normal driving (sudden halt, failure to separate, blocked motion).\n- Other unusual signs (e.g., airbags, leaking fluids, shattered glass) can also support the conclusion.\nA collision is \u201clikely\u201d if two or more independent cues strongly indicate impact, even if the collision itself is not shown. If evidence is weak or ambiguous, do not assume a collision.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
49
- "question": "Did a collision occur between two or more vehicles?"
50
- },
51
- {
52
- "id": "traffic_chunks/MmsgbcpWn-k_21",
53
- "video": "traffic_chunks/MmsgbcpWn-k_21.mp4",
54
- "system_prompt": "You are a traffic monitoring system analyzing video of a street. Determine if a collision between vehicles, or vehicle and pedestrian or vehicle and cyclist has likely occurred.\nThe clip may not show the exact moment of impact, so use post-event evidence such as:\n- Vehicles in contact or showing visible damage (dents, debris, smoke, broken parts).\n- Pedestrian or cyclist on the ground, struck, or showing clear signs of impact or distress.. \n- Abnormal positions (intersecting, facing opposite directions, one against the side/rear of another).\n- Stationary vehicles remaining in contact or stopped in unnatural alignment.\n- Behavior inconsistent with normal driving (sudden halt, failure to separate, blocked motion).\n- Other unusual signs (e.g., airbags, leaking fluids, shattered glass) can also support the conclusion.\nA collision is \u201clikely\u201d if two or more independent cues strongly indicate impact, even if the collision itself is not shown. If evidence is weak or ambiguous, do not assume a collision.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
55
- "question": "Did a collision occur between two or more vehicles?"
56
- },
57
- {
58
- "id": "traffic_chunks/NOALQmAB4yE_24",
59
- "video": "traffic_chunks/NOALQmAB4yE_24.mp4",
60
- "system_prompt": "You are a traffic monitoring system analyzing video of a street. Determine if a collision between vehicles, or vehicle and pedestrian or vehicle and cyclist has likely occurred.\nThe clip may not show the exact moment of impact, so use post-event evidence such as:\n- Vehicles in contact or showing visible damage (dents, debris, smoke, broken parts).\n- Pedestrian or cyclist on the ground, struck, or showing clear signs of impact or distress.. \n- Abnormal positions (intersecting, facing opposite directions, one against the side/rear of another).\n- Stationary vehicles remaining in contact or stopped in unnatural alignment.\n- Behavior inconsistent with normal driving (sudden halt, failure to separate, blocked motion).\n- Other unusual signs (e.g., airbags, leaking fluids, shattered glass) can also support the conclusion.\nA collision is \u201clikely\u201d if two or more independent cues strongly indicate impact, even if the collision itself is not shown. If evidence is weak or ambiguous, do not assume a collision.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
61
- "question": "Did a collision occur between two or more vehicles?"
62
- },
63
- {
64
- "id": "safety_chunks/evs_134db13b21",
65
- "video": "safety_chunks/evs_134db13b21.mp4",
66
- "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
67
- "question": "Did a person tailgate through the access gate without badging?"
68
- },
69
- {
70
- "id": "safety_chunks/evs_99c1cd175d",
71
- "video": "safety_chunks/evs_99c1cd175d.mp4",
72
- "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
73
- "question": "Did a person tailgate through the access gate without badging?"
74
- },
75
- {
76
- "id": "safety_chunks/evs_8cc3cd0258",
77
- "video": "safety_chunks/evs_8cc3cd0258.mp4",
78
- "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
79
- "question": "Did a person tailgate through the access gate without badging?"
80
- },
81
- {
82
- "id": "safety_chunks/evs_bc929d97da",
83
- "video": "safety_chunks/evs_bc929d97da.mp4",
84
- "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
85
- "question": "Did a person tailgate through the access gate without badging?"
86
- },
87
- {
88
- "id": "safety_chunks/evs_d897e4ada3",
89
- "video": "safety_chunks/evs_d897e4ada3.mp4",
90
- "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
91
- "question": "Did a person tailgate through the access gate without badging?"
92
- },
93
- {
94
- "id": "safety_chunks/evs_c3e684b820",
95
- "video": "safety_chunks/evs_c3e684b820.mp4",
96
- "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
97
- "question": "Did a person tailgate through the access gate without badging?"
98
- },
99
- {
100
- "id": "safety_chunks/evs_17560f2666",
101
- "video": "safety_chunks/evs_17560f2666.mp4",
102
- "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
103
- "question": "Did a person tailgate through the access gate without badging?"
104
- },
105
- {
106
- "id": "safety_chunks/evs_0f0c53aa1c",
107
- "video": "safety_chunks/evs_0f0c53aa1c.mp4",
108
- "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
109
- "question": "Did a person tailgate through the access gate without badging?"
110
- },
111
- {
112
- "id": "safety_chunks/evs_405dd1e5f8",
113
- "video": "safety_chunks/evs_405dd1e5f8.mp4",
114
- "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
115
- "question": "Did a person tailgate through the access gate without badging?"
116
- },
117
- {
118
- "id": "safety_chunks/evs_8f5ae5b865",
119
- "video": "safety_chunks/evs_8f5ae5b865.mp4",
120
- "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
121
- "question": "Did a person tailgate through the access gate without badging?"
122
- },
123
- {
124
- "id": "safety_chunks/evs_50815b9c8c",
125
- "video": "safety_chunks/evs_50815b9c8c.mp4",
126
- "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
127
- "question": "Did a person tailgate through the access gate without badging?"
128
- },
129
- {
130
- "id": "safety_chunks/tailgating_13",
131
- "video": "safety_chunks/tailgating_13.mp4",
132
- "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
133
- "question": "Did a person tailgate through the access gate without badging?"
134
- },
135
- {
136
- "id": "safety_chunks/evs_866549be90",
137
- "video": "safety_chunks/evs_866549be90.mp4",
138
- "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
139
- "question": "Did a person tailgate through the access gate without badging?"
140
- },
141
- {
142
- "id": "safety_chunks/evs_e5ccfbd6bd",
143
- "video": "safety_chunks/evs_e5ccfbd6bd.mp4",
144
- "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
145
- "question": "Did a person tailgate through the access gate without badging?"
146
- },
147
- {
148
- "id": "safety_chunks/evs_d2523c5c64",
149
- "video": "safety_chunks/evs_d2523c5c64.mp4",
150
- "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
151
- "question": "Did a person tailgate through the access gate without badging?"
152
- },
153
- {
154
- "id": "safety_chunks/evs_f717d6dd57",
155
- "video": "safety_chunks/evs_f717d6dd57.mp4",
156
- "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
157
- "question": "Did a person tailgate through the access gate without badging?"
158
- },
159
- {
160
- "id": "safety_chunks/evs_110cbe0aac",
161
- "video": "safety_chunks/evs_110cbe0aac.mp4",
162
- "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
163
- "question": "Is anyone fighting?"
164
- },
165
- {
166
- "id": "safety_chunks/evs_8e472b1db0",
167
- "video": "safety_chunks/evs_8e472b1db0.mp4",
168
- "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
169
- "question": "Is anyone fighting?"
170
- },
171
- {
172
- "id": "safety_chunks/evs_abf9d9bc50",
173
- "video": "safety_chunks/evs_abf9d9bc50.mp4",
174
- "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
175
- "question": "Did a person tailgate through the access gate without badging?"
176
- },
177
- {
178
- "id": "safety_chunks/evs_c950abf04f",
179
- "video": "safety_chunks/evs_c950abf04f.mp4",
180
- "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
181
- "question": "Did a person tailgate through the access gate without badging?"
182
- },
183
- {
184
- "id": "safety_chunks/Security_3_22",
185
- "video": "safety_chunks/Security_3_22.mp4",
186
- "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
187
- "question": "Is anyone fighting?"
188
- },
189
- {
190
- "id": "safety_chunks/Security_2_23",
191
- "video": "safety_chunks/Security_2_23.mp4",
192
- "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
193
- "question": "Did a person tailgate through the access gate without badging?"
194
- },
195
- {
196
- "id": "safety_chunks/Security_2_24",
197
- "video": "safety_chunks/Security_2_24.mp4",
198
- "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
199
- "question": "Did a person tailgate through the access gate without badging?"
200
- },
201
- {
202
- "id": "safety_chunks/Security_2_25",
203
- "video": "safety_chunks/Security_2_25.mp4",
204
- "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
205
- "question": "Entering is from left to right and exiting is from right to left, is anyone exiting with a cart full of equipment?"
206
- },
207
- {
208
- "id": "safety_chunks/Security_2_26",
209
- "video": "safety_chunks/Security_2_26.mp4",
210
- "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
211
- "question": "Entering is from left to right and exiting is from right to left, is anyone entering with a cart full of equipment?"
212
- },
213
- {
214
- "id": "safety_chunks/GX010011_Clip_8_27",
215
- "video": "safety_chunks/GX010011_Clip_8_27.mp4",
216
- "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
217
- "question": "Is the hallway overcrowded?"
218
- },
219
- {
220
- "id": "safety_chunks/GX010011_Clip_9_28",
221
- "video": "safety_chunks/GX010011_Clip_9_28.mp4",
222
- "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
223
- "question": "Does everyone scan a badge to enter the room?"
224
- },
225
- {
226
- "id": "safety_chunks/evs_f262e9ed6a",
227
- "video": "safety_chunks/evs_f262e9ed6a.mp4",
228
- "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
229
- "question": "Did a person tailgate through the access gate without badging?"
230
- },
231
- {
232
- "id": "safety_chunks/evs_48a0587066",
233
- "video": "safety_chunks/evs_48a0587066.mp4",
234
- "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
235
- "question": "Did a person tailgate through the access gate without badging?"
236
- },
237
- {
238
- "id": "safety_chunks/evs_191151ccf4",
239
- "video": "safety_chunks/evs_191151ccf4.mp4",
240
- "system_prompt": "You are a security monitoring system analyzing video of a access gate and hallways. \n\nGate Monitoring:\nWhen monitoring access gate, people are required to badge, the gate unlocks, and they enter. Determine whether a tailgating/piggybacking event has likely occurred (i.e., one or more people enter on a single authorization without individually badging).\nThe video clip shows the badge reader. Infer from post-event evidence such as:\n- Single gate-open event while multiple people pass through before the gate closes.\n- A follower enters closely behind the badged person (minimal gap in time or distance) without stopping at the reader or making a clear badging gesture.\n- The gate is held open/propped, or gate-open duration is longer than typical for a single entrant.\n- Multiple people cross the threshold during one gate cycle (gate does not close between them).\n- The leader looks back/holds the door while the follower does not badge.\n\nHallway Monitoring: \n- At the hallways look for fights and overcrowding.\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
241
- "question": "Did a person tailgate through the access gate without badging?"
242
- },
243
- {
244
- "id": "warehouse_chunks/Warehouse_240219_GoPro_7_GX070600_100_3_2",
245
- "video": "warehouse_chunks/Warehouse_240219_GoPro_7_GX070600_100_3_2.mp4",
246
- "system_prompt": "You are a warehouse monitoring system analyzing video footage. Your task is to answer safety and compliance questions strictly with \"Yes\" or \"No\".\nThe clip may not show the entire event, so rely on visible evidence. Infer from post-event evidence: \n- PPE compliance (hardhats, safety vests, etc.).\n- Path clear or obstructed for forklifts or robots.\n- Boxes stacked properly on pallets or being lifted.\n- Boxes crushed, dropped, or falling off forklifts/robots/operators.\n- Operator behavior (falling, using cell phone, throwing boxes).\n- Human safety risks (walking in front of forklift, near falling boxes, jumping from ladders).\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
247
- "question": "Are all workers wearing PPE (hardhats and safety vests)?"
248
- },
249
- {
250
- "id": "warehouse_chunks/Warehouse_240219_GoPro_7_GX010600_500_2_3",
251
- "video": "warehouse_chunks/Warehouse_240219_GoPro_7_GX010600_500_2_3.mp4",
252
- "system_prompt": "You are a warehouse monitoring system analyzing video footage. Your task is to answer safety and compliance questions strictly with \"Yes\" or \"No\".\nThe clip may not show the entire event, so rely on visible evidence. Infer from post-event evidence: \n- PPE compliance (hardhats, safety vests, etc.).\n- Path clear or obstructed for forklifts or robots.\n- Boxes stacked properly on pallets or being lifted.\n- Boxes crushed, dropped, or falling off forklifts/robots/operators.\n- Operator behavior (falling, using cell phone, throwing boxes).\n- Human safety risks (walking in front of forklift, near falling boxes, jumping from ladders).\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
253
- "question": "Is the path obstructed for the forklift to pass?"
254
- },
255
- {
256
- "id": "warehouse_chunks/Warehouse_240219_GoPro_7_GX010600_500_1_4",
257
- "video": "warehouse_chunks/Warehouse_240219_GoPro_7_GX010600_500_1_4.mp4",
258
- "system_prompt": "You are a warehouse monitoring system analyzing video footage. Your task is to answer safety and compliance questions strictly with \"Yes\" or \"No\".\nThe clip may not show the entire event, so rely on visible evidence. Infer from post-event evidence: \n- PPE compliance (hardhats, safety vests, etc.).\n- Path clear or obstructed for forklifts or robots.\n- Boxes stacked properly on pallets or being lifted.\n- Boxes crushed, dropped, or falling off forklifts/robots/operators.\n- Operator behavior (falling, using cell phone, throwing boxes).\n- Human safety risks (walking in front of forklift, near falling boxes, jumping from ladders).\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
259
- "question": "Are the boxes properly stacked on the pallet loaded on the forklift?"
260
- },
261
- {
262
- "id": "warehouse_chunks/Warehouse_240219_GoPro_7_GX010600_400_1_5",
263
- "video": "warehouse_chunks/Warehouse_240219_GoPro_7_GX010600_400_1_5.mp4",
264
- "system_prompt": "You are a warehouse monitoring system analyzing video footage. Your task is to answer safety and compliance questions strictly with \"Yes\" or \"No\".\nThe clip may not show the entire event, so rely on visible evidence. Infer from post-event evidence: \n- PPE compliance (hardhats, safety vests, etc.).\n- Path clear or obstructed for forklifts or robots.\n- Boxes stacked properly on pallets or being lifted.\n- Boxes crushed, dropped, or falling off forklifts/robots/operators.\n- Operator behavior (falling, using cell phone, throwing boxes).\n- Human safety risks (walking in front of forklift, near falling boxes, jumping from ladders).\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
265
- "question": "Is the path obstructed for the forklift to pass?"
266
- },
267
- {
268
- "id": "warehouse_chunks/warehouse_1_600_4_6",
269
- "video": "warehouse_chunks/warehouse_1_600_4_6.mp4",
270
- "system_prompt": "You are a warehouse monitoring system analyzing video footage. Your task is to answer safety and compliance questions strictly with \"Yes\" or \"No\".\nThe clip may not show the entire event, so rely on visible evidence. Infer from post-event evidence: \n- PPE compliance (hardhats, safety vests, etc.).\n- Path clear or obstructed for forklifts or robots.\n- Boxes stacked properly on pallets or being lifted.\n- Boxes crushed, dropped, or falling off forklifts/robots/operators.\n- Operator behavior (falling, using cell phone, throwing boxes).\n- Human safety risks (walking in front of forklift, near falling boxes, jumping from ladders).\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
271
- "question": "Did anyone experience a fall or end up on the ground?"
272
- },
273
- {
274
- "id": "warehouse_chunks/warehouse_1_540_7",
275
- "video": "warehouse_chunks/warehouse_1_540_7.mp4",
276
- "system_prompt": "You are a warehouse monitoring system analyzing video footage. Your task is to answer safety and compliance questions strictly with \"Yes\" or \"No\".\nThe clip may not show the entire event, so rely on visible evidence. Infer from post-event evidence: \n- PPE compliance (hardhats, safety vests, etc.).\n- Path clear or obstructed for forklifts or robots.\n- Boxes stacked properly on pallets or being lifted.\n- Boxes crushed, dropped, or falling off forklifts/robots/operators.\n- Operator behavior (falling, using cell phone, throwing boxes).\n- Human safety risks (walking in front of forklift, near falling boxes, jumping from ladders).\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
277
- "question": "Is any person near or in close proximity to the box when it falls?"
278
- },
279
- {
280
- "id": "warehouse_chunks/warehouse_1_540_4_8",
281
- "video": "warehouse_chunks/warehouse_1_540_4_8.mp4",
282
- "system_prompt": "You are a warehouse monitoring system analyzing video footage. Your task is to answer safety and compliance questions strictly with \"Yes\" or \"No\".\nThe clip may not show the entire event, so rely on visible evidence. Infer from post-event evidence: \n- PPE compliance (hardhats, safety vests, etc.).\n- Path clear or obstructed for forklifts or robots.\n- Boxes stacked properly on pallets or being lifted.\n- Boxes crushed, dropped, or falling off forklifts/robots/operators.\n- Operator behavior (falling, using cell phone, throwing boxes).\n- Human safety risks (walking in front of forklift, near falling boxes, jumping from ladders).\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
283
- "question": "Is the operator or a person using a cell phone while working?"
284
- },
285
- {
286
- "id": "warehouse_chunks/warehouse_1_425_6_9",
287
- "video": "warehouse_chunks/warehouse_1_425_6_9.mp4",
288
- "system_prompt": "You are a warehouse monitoring system analyzing video footage. Your task is to answer safety and compliance questions strictly with \"Yes\" or \"No\".\nThe clip may not show the entire event, so rely on visible evidence. Infer from post-event evidence: \n- PPE compliance (hardhats, safety vests, etc.).\n- Path clear or obstructed for forklifts or robots.\n- Boxes stacked properly on pallets or being lifted.\n- Boxes crushed, dropped, or falling off forklifts/robots/operators.\n- Operator behavior (falling, using cell phone, throwing boxes).\n- Human safety risks (walking in front of forklift, near falling boxes, jumping from ladders).\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
289
- "question": "Is the operator or a person jumping from the ladder?"
290
- },
291
- {
292
- "id": "warehouse_chunks/concat_wh_52_0_0_10",
293
- "video": "warehouse_chunks/concat_wh_52_0_0_10.mp4",
294
- "system_prompt": "You are a warehouse monitoring system analyzing video footage. Your task is to answer safety and compliance questions strictly with \"Yes\" or \"No\".\nThe clip may not show the entire event, so rely on visible evidence. Infer from post-event evidence: \n- PPE compliance (hardhats, safety vests, etc.).\n- Path clear or obstructed for forklifts or robots.\n- Boxes stacked properly on pallets or being lifted.\n- Boxes crushed, dropped, or falling off forklifts/robots/operators.\n- Operator behavior (falling, using cell phone, throwing boxes).\n- Human safety risks (walking in front of forklift, near falling boxes, jumping from ladders).\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
295
- "question": "Does any box fall off the robot?"
296
- },
297
- {
298
- "id": "warehouse_chunks/warehouse_1_425_4_11",
299
- "video": "warehouse_chunks/warehouse_1_425_4_11.mp4",
300
- "system_prompt": "You are a warehouse monitoring system analyzing video footage. Your task is to answer safety and compliance questions strictly with \"Yes\" or \"No\".\nThe clip may not show the entire event, so rely on visible evidence. Infer from post-event evidence: \n- PPE compliance (hardhats, safety vests, etc.).\n- Path clear or obstructed for forklifts or robots.\n- Boxes stacked properly on pallets or being lifted.\n- Boxes crushed, dropped, or falling off forklifts/robots/operators.\n- Operator behavior (falling, using cell phone, throwing boxes).\n- Human safety risks (walking in front of forklift, near falling boxes, jumping from ladders).\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
301
- "question": "Are the boxes properly stacked as the operator lifts?"
302
- },
303
- {
304
- "id": "warehouse_chunks/warehouse_1_120_12",
305
- "video": "warehouse_chunks/warehouse_1_120_12.mp4",
306
- "system_prompt": "You are a warehouse monitoring system analyzing video footage. Your task is to answer safety and compliance questions strictly with \"Yes\" or \"No\".\nThe clip may not show the entire event, so rely on visible evidence. Infer from post-event evidence: \n- PPE compliance (hardhats, safety vests, etc.).\n- Path clear or obstructed for forklifts or robots.\n- Boxes stacked properly on pallets or being lifted.\n- Boxes crushed, dropped, or falling off forklifts/robots/operators.\n- Operator behavior (falling, using cell phone, throwing boxes).\n- Human safety risks (walking in front of forklift, near falling boxes, jumping from ladders).\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
307
- "question": "Does the operator throw any boxes?"
308
- },
309
- {
310
- "id": "warehouse_chunks/concat_wh_52_0_5_13",
311
- "video": "warehouse_chunks/concat_wh_52_0_5_13.mp4",
312
- "system_prompt": "You are a warehouse monitoring system analyzing video footage. Your task is to answer safety and compliance questions strictly with \"Yes\" or \"No\".\nThe clip may not show the entire event, so rely on visible evidence. Infer from post-event evidence: \n- PPE compliance (hardhats, safety vests, etc.).\n- Path clear or obstructed for forklifts or robots.\n- Boxes stacked properly on pallets or being lifted.\n- Boxes crushed, dropped, or falling off forklifts/robots/operators.\n- Operator behavior (falling, using cell phone, throwing boxes).\n- Human safety risks (walking in front of forklift, near falling boxes, jumping from ladders).\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
313
- "question": "Does a box fall off the robot?"
314
- },
315
- {
316
- "id": "warehouse_chunks/concat_wh_52_300_0_14",
317
- "video": "warehouse_chunks/concat_wh_52_300_0_14.mp4",
318
- "system_prompt": "You are a warehouse monitoring system analyzing video footage. Your task is to answer safety and compliance questions strictly with \"Yes\" or \"No\".\nThe clip may not show the entire event, so rely on visible evidence. Infer from post-event evidence: \n- PPE compliance (hardhats, safety vests, etc.).\n- Path clear or obstructed for forklifts or robots.\n- Boxes stacked properly on pallets or being lifted.\n- Boxes crushed, dropped, or falling off forklifts/robots/operators.\n- Operator behavior (falling, using cell phone, throwing boxes).\n- Human safety risks (walking in front of forklift, near falling boxes, jumping from ladders).\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
319
- "question": "Does anyone walk in front of the forklift?"
320
- },
321
- {
322
- "id": "warehouse_chunks/concat_wh_52_300_1_15",
323
- "video": "warehouse_chunks/concat_wh_52_300_1_15.mp4",
324
- "system_prompt": "You are a warehouse monitoring system analyzing video footage. Your task is to answer safety and compliance questions strictly with \"Yes\" or \"No\".\nThe clip may not show the entire event, so rely on visible evidence. Infer from post-event evidence: \n- PPE compliance (hardhats, safety vests, etc.).\n- Path clear or obstructed for forklifts or robots.\n- Boxes stacked properly on pallets or being lifted.\n- Boxes crushed, dropped, or falling off forklifts/robots/operators.\n- Operator behavior (falling, using cell phone, throwing boxes).\n- Human safety risks (walking in front of forklift, near falling boxes, jumping from ladders).\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
325
- "question": "Does anyone walk in front of the forklift?"
326
- },
327
- {
328
- "id": "warehouse_chunks/concat_wh_52_300_2_16",
329
- "video": "warehouse_chunks/concat_wh_52_300_2_16.mp4",
330
- "system_prompt": "You are a warehouse monitoring system analyzing video footage. Your task is to answer safety and compliance questions strictly with \"Yes\" or \"No\".\nThe clip may not show the entire event, so rely on visible evidence. Infer from post-event evidence: \n- PPE compliance (hardhats, safety vests, etc.).\n- Path clear or obstructed for forklifts or robots.\n- Boxes stacked properly on pallets or being lifted.\n- Boxes crushed, dropped, or falling off forklifts/robots/operators.\n- Operator behavior (falling, using cell phone, throwing boxes).\n- Human safety risks (walking in front of forklift, near falling boxes, jumping from ladders).\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
331
- "question": "Is the path of the forklift clear?"
332
- },
333
- {
334
- "id": "warehouse_chunks/concat_wh_52_300_2_17",
335
- "video": "warehouse_chunks/concat_wh_52_300_2_17.mp4",
336
- "system_prompt": "You are a warehouse monitoring system analyzing video footage. Your task is to answer safety and compliance questions strictly with \"Yes\" or \"No\".\nThe clip may not show the entire event, so rely on visible evidence. Infer from post-event evidence: \n- PPE compliance (hardhats, safety vests, etc.).\n- Path clear or obstructed for forklifts or robots.\n- Boxes stacked properly on pallets or being lifted.\n- Boxes crushed, dropped, or falling off forklifts/robots/operators.\n- Operator behavior (falling, using cell phone, throwing boxes).\n- Human safety risks (walking in front of forklift, near falling boxes, jumping from ladders).\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
337
- "question": "Are the boxes properly stacked on the pallet that is loaded on the forklift?"
338
- },
339
- {
340
- "id": "warehouse_chunks/concat_wh_52_300_1_18",
341
- "video": "warehouse_chunks/concat_wh_52_300_1_18.mp4",
342
- "system_prompt": "You are a warehouse monitoring system analyzing video footage. Your task is to answer safety and compliance questions strictly with \"Yes\" or \"No\".\nThe clip may not show the entire event, so rely on visible evidence. Infer from post-event evidence: \n- PPE compliance (hardhats, safety vests, etc.).\n- Path clear or obstructed for forklifts or robots.\n- Boxes stacked properly on pallets or being lifted.\n- Boxes crushed, dropped, or falling off forklifts/robots/operators.\n- Operator behavior (falling, using cell phone, throwing boxes).\n- Human safety risks (walking in front of forklift, near falling boxes, jumping from ladders).\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
343
- "question": "Are all workers wearing PPE?"
344
- },
345
- {
346
- "id": "warehouse_chunks/concat_wh_52_300_3_19",
347
- "video": "warehouse_chunks/concat_wh_52_300_3_19.mp4",
348
- "system_prompt": "You are a warehouse monitoring system analyzing video footage. Your task is to answer safety and compliance questions strictly with \"Yes\" or \"No\".\nThe clip may not show the entire event, so rely on visible evidence. Infer from post-event evidence: \n- PPE compliance (hardhats, safety vests, etc.).\n- Path clear or obstructed for forklifts or robots.\n- Boxes stacked properly on pallets or being lifted.\n- Boxes crushed, dropped, or falling off forklifts/robots/operators.\n- Operator behavior (falling, using cell phone, throwing boxes).\n- Human safety risks (walking in front of forklift, near falling boxes, jumping from ladders).\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
349
- "question": "Are the boxes properly stacked on the pallet that is loaded on the forklift?"
350
- },
351
- {
352
- "id": "warehouse_chunks/concat_wh_52_1890_0_20",
353
- "video": "warehouse_chunks/concat_wh_52_1890_0_20.mp4",
354
- "system_prompt": "You are a warehouse monitoring system analyzing video footage. Your task is to answer safety and compliance questions strictly with \"Yes\" or \"No\".\nThe clip may not show the entire event, so rely on visible evidence. Infer from post-event evidence: \n- PPE compliance (hardhats, safety vests, etc.).\n- Path clear or obstructed for forklifts or robots.\n- Boxes stacked properly on pallets or being lifted.\n- Boxes crushed, dropped, or falling off forklifts/robots/operators.\n- Operator behavior (falling, using cell phone, throwing boxes).\n- Human safety risks (walking in front of forklift, near falling boxes, jumping from ladders).\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
355
- "question": "Are all workers wearing PPE?"
356
- },
357
- {
358
- "id": "warehouse_chunks/concat_wh_52_1890_4_21",
359
- "video": "warehouse_chunks/concat_wh_52_1890_4_21.mp4",
360
- "system_prompt": "You are a warehouse monitoring system analyzing video footage. Your task is to answer safety and compliance questions strictly with \"Yes\" or \"No\".\nThe clip may not show the entire event, so rely on visible evidence. Infer from post-event evidence: \n- PPE compliance (hardhats, safety vests, etc.).\n- Path clear or obstructed for forklifts or robots.\n- Boxes stacked properly on pallets or being lifted.\n- Boxes crushed, dropped, or falling off forklifts/robots/operators.\n- Operator behavior (falling, using cell phone, throwing boxes).\n- Human safety risks (walking in front of forklift, near falling boxes, jumping from ladders).\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
361
- "question": "Are any boxes crushed?"
362
- },
363
- {
364
- "id": "warehouse_chunks/concat_wh_52_1890_4_22",
365
- "video": "warehouse_chunks/concat_wh_52_1890_4_22.mp4",
366
- "system_prompt": "You are a warehouse monitoring system analyzing video footage. Your task is to answer safety and compliance questions strictly with \"Yes\" or \"No\".\nThe clip may not show the entire event, so rely on visible evidence. Infer from post-event evidence: \n- PPE compliance (hardhats, safety vests, etc.).\n- Path clear or obstructed for forklifts or robots.\n- Boxes stacked properly on pallets or being lifted.\n- Boxes crushed, dropped, or falling off forklifts/robots/operators.\n- Operator behavior (falling, using cell phone, throwing boxes).\n- Human safety risks (walking in front of forklift, near falling boxes, jumping from ladders).\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
367
- "question": "Do any boxes get dropped?"
368
- },
369
- {
370
- "id": "warehouse_chunks/concat_wh_52_1890_5_23",
371
- "video": "warehouse_chunks/concat_wh_52_1890_5_23.mp4",
372
- "system_prompt": "You are a warehouse monitoring system analyzing video footage. Your task is to answer safety and compliance questions strictly with \"Yes\" or \"No\".\nThe clip may not show the entire event, so rely on visible evidence. Infer from post-event evidence: \n- PPE compliance (hardhats, safety vests, etc.).\n- Path clear or obstructed for forklifts or robots.\n- Boxes stacked properly on pallets or being lifted.\n- Boxes crushed, dropped, or falling off forklifts/robots/operators.\n- Operator behavior (falling, using cell phone, throwing boxes).\n- Human safety risks (walking in front of forklift, near falling boxes, jumping from ladders).\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
373
- "question": "Are any boxes crushed?"
374
- },
375
- {
376
- "id": "warehouse_chunks/concat_wh_52_1890_5_24",
377
- "video": "warehouse_chunks/concat_wh_52_1890_5_24.mp4",
378
- "system_prompt": "You are a warehouse monitoring system analyzing video footage. Your task is to answer safety and compliance questions strictly with \"Yes\" or \"No\".\nThe clip may not show the entire event, so rely on visible evidence. Infer from post-event evidence: \n- PPE compliance (hardhats, safety vests, etc.).\n- Path clear or obstructed for forklifts or robots.\n- Boxes stacked properly on pallets or being lifted.\n- Boxes crushed, dropped, or falling off forklifts/robots/operators.\n- Operator behavior (falling, using cell phone, throwing boxes).\n- Human safety risks (walking in front of forklift, near falling boxes, jumping from ladders).\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
379
- "question": "Do any boxes get dropped?"
380
- },
381
- {
382
- "id": "warehouse_chunks/concat_wh_52_1890_9_25",
383
- "video": "warehouse_chunks/concat_wh_52_1890_9_25.mp4",
384
- "system_prompt": "You are a warehouse monitoring system analyzing video footage. Your task is to answer safety and compliance questions strictly with \"Yes\" or \"No\".\nThe clip may not show the entire event, so rely on visible evidence. Infer from post-event evidence: \n- PPE compliance (hardhats, safety vests, etc.).\n- Path clear or obstructed for forklifts or robots.\n- Boxes stacked properly on pallets or being lifted.\n- Boxes crushed, dropped, or falling off forklifts/robots/operators.\n- Operator behavior (falling, using cell phone, throwing boxes).\n- Human safety risks (walking in front of forklift, near falling boxes, jumping from ladders).\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
385
- "question": "Is everyone wearing a hardhat and safety vest?"
386
- },
387
- {
388
- "id": "warehouse_chunks/concat_wh_52_2925_1_26",
389
- "video": "warehouse_chunks/concat_wh_52_2925_1_26.mp4",
390
- "system_prompt": "You are a warehouse monitoring system analyzing video footage. Your task is to answer safety and compliance questions strictly with \"Yes\" or \"No\".\nThe clip may not show the entire event, so rely on visible evidence. Infer from post-event evidence: \n- PPE compliance (hardhats, safety vests, etc.).\n- Path clear or obstructed for forklifts or robots.\n- Boxes stacked properly on pallets or being lifted.\n- Boxes crushed, dropped, or falling off forklifts/robots/operators.\n- Operator behavior (falling, using cell phone, throwing boxes).\n- Human safety risks (walking in front of forklift, near falling boxes, jumping from ladders).\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
391
- "question": "Do any boxes get dropped?"
392
- },
393
- {
394
- "id": "warehouse_chunks/concat_wh_52_2925_27",
395
- "video": "warehouse_chunks/concat_wh_52_2925_27.mp4",
396
- "system_prompt": "You are a warehouse monitoring system analyzing video footage. Your task is to answer safety and compliance questions strictly with \"Yes\" or \"No\".\nThe clip may not show the entire event, so rely on visible evidence. Infer from post-event evidence: \n- PPE compliance (hardhats, safety vests, etc.).\n- Path clear or obstructed for forklifts or robots.\n- Boxes stacked properly on pallets or being lifted.\n- Boxes crushed, dropped, or falling off forklifts/robots/operators.\n- Operator behavior (falling, using cell phone, throwing boxes).\n- Human safety risks (walking in front of forklift, near falling boxes, jumping from ladders).\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
397
- "question": "Is anything blocking the path of the small yellow robot?"
398
- },
399
- {
400
- "id": "warehouse_chunks/concat_wh_52_2925_28",
401
- "video": "warehouse_chunks/concat_wh_52_2925_28.mp4",
402
- "system_prompt": "You are a warehouse monitoring system analyzing video footage. Your task is to answer safety and compliance questions strictly with \"Yes\" or \"No\".\nThe clip may not show the entire event, so rely on visible evidence. Infer from post-event evidence: \n- PPE compliance (hardhats, safety vests, etc.).\n- Path clear or obstructed for forklifts or robots.\n- Boxes stacked properly on pallets or being lifted.\n- Boxes crushed, dropped, or falling off forklifts/robots/operators.\n- Operator behavior (falling, using cell phone, throwing boxes).\n- Human safety risks (walking in front of forklift, near falling boxes, jumping from ladders).\n\nConfirm \"Yes\" only when visual evidence is clear.\nOtherwise, answer \"No\".",
403
- "question": "Is anything blocking the path of the forklift?"
404
- }
405
- ]
406
- }
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
data/event_verification/filtered/tailgating/location_a/test_annotation.json DELETED
@@ -1,172 +0,0 @@
1
- {
2
- "bcq": [
3
- {
4
- "id": "videos/site_1/category_tailgate/10_15_2025_sp_8_35_08_sp_PM_sp__lp_UTC-07_00_rp_",
5
- "video": "videos/site_1/category_tailgate/10_15_2025_sp_8_35_08_sp_PM_sp__lp_UTC-07_00_rp_.mp4",
6
- "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
7
- "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
8
- },
9
- {
10
- "id": "videos/site_1/category_badge/11_20_2025_sp_4_13_08_sp_PM_sp__lp_UTC-08_00_rp_",
11
- "video": "videos/site_1/category_badge/11_20_2025_sp_4_13_08_sp_PM_sp__lp_UTC-08_00_rp_.mp4",
12
- "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
13
- "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
14
- },
15
- {
16
- "id": "videos/site_1/category_badge/11_24_2025_sp_9_44_18_sp_AM_sp__lp_UTC-08_00_rp_",
17
- "video": "videos/site_1/category_badge/11_24_2025_sp_9_44_18_sp_AM_sp__lp_UTC-08_00_rp_.mp4",
18
- "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
19
- "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
20
- },
21
- {
22
- "id": "videos/site_1/category_badge/11_20_2025_sp_1_01_55_sp_PM_sp__lp_UTC-08_00_rp_",
23
- "video": "videos/site_1/category_badge/11_20_2025_sp_1_01_55_sp_PM_sp__lp_UTC-08_00_rp_.mp4",
24
- "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
25
- "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
26
- },
27
- {
28
- "id": "videos/site_1/category_tailgate/10_25_2025_sp_6_30_25_sp_PM_sp__lp_UTC-07_00_rp_",
29
- "video": "videos/site_1/category_tailgate/10_25_2025_sp_6_30_25_sp_PM_sp__lp_UTC-07_00_rp_.mp4",
30
- "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
31
- "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
32
- },
33
- {
34
- "id": "videos/site_1/category_tailgate/10_15_2025_sp_8_38_19_sp_PM_sp__lp_UTC-07_00_rp_",
35
- "video": "videos/site_1/category_tailgate/10_15_2025_sp_8_38_19_sp_PM_sp__lp_UTC-07_00_rp_.mp4",
36
- "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
37
- "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
38
- },
39
- {
40
- "id": "videos/site_1/category_tailgate/10_8_2025_sp_8_38_03_sp_PM_sp__lp_UTC-07_00_rp_",
41
- "video": "videos/site_1/category_tailgate/10_8_2025_sp_8_38_03_sp_PM_sp__lp_UTC-07_00_rp_.mp4",
42
- "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
43
- "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
44
- },
45
- {
46
- "id": "videos/site_1/category_tailgate/10_25_2025_sp_6_09_05_sp_PM_sp__lp_UTC-07_00_rp_",
47
- "video": "videos/site_1/category_tailgate/10_25_2025_sp_6_09_05_sp_PM_sp__lp_UTC-07_00_rp_.mp4",
48
- "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
49
- "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
50
- },
51
- {
52
- "id": "videos/site_1/category_tailgate/10_25_2025_sp_6_46_58_sp_PM_sp__lp_UTC-07_00_rp_",
53
- "video": "videos/site_1/category_tailgate/10_25_2025_sp_6_46_58_sp_PM_sp__lp_UTC-07_00_rp_.mp4",
54
- "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
55
- "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
56
- },
57
- {
58
- "id": "videos/site_1/category_badge/11_24_2025_sp_10_23_17_sp_AM_sp__lp_UTC-08_00_rp_",
59
- "video": "videos/site_1/category_badge/11_24_2025_sp_10_23_17_sp_AM_sp__lp_UTC-08_00_rp_.mp4",
60
- "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
61
- "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
62
- },
63
- {
64
- "id": "videos/site_1/category_tailgate/10_9_2025_sp_8_48_30_sp_PM_sp__lp_UTC-07_00_rp_",
65
- "video": "videos/site_1/category_tailgate/10_9_2025_sp_8_48_30_sp_PM_sp__lp_UTC-07_00_rp_.mp4",
66
- "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
67
- "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
68
- },
69
- {
70
- "id": "videos/site_1/category_tailgate/10_8_2025_sp_8_43_54_sp_PM_sp__lp_UTC-07_00_rp_",
71
- "video": "videos/site_1/category_tailgate/10_8_2025_sp_8_43_54_sp_PM_sp__lp_UTC-07_00_rp_.mp4",
72
- "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
73
- "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
74
- },
75
- {
76
- "id": "videos/site_1/category_tailgate/11_21_2025_sp_11_56_03_sp_AM_sp__lp_UTC-08_00_rp_",
77
- "video": "videos/site_1/category_tailgate/11_21_2025_sp_11_56_03_sp_AM_sp__lp_UTC-08_00_rp_.mp4",
78
- "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
79
- "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
80
- },
81
- {
82
- "id": "videos/site_1/category_tailgate/10_16_2025_sp_9_00_13_sp_PM_sp__lp_UTC-07_00_rp_",
83
- "video": "videos/site_1/category_tailgate/10_16_2025_sp_9_00_13_sp_PM_sp__lp_UTC-07_00_rp_.mp4",
84
- "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
85
- "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
86
- },
87
- {
88
- "id": "videos/site_1/category_tailgate/10_25_2025_sp_6_48_55_sp_PM_sp__lp_UTC-07_00_rp_",
89
- "video": "videos/site_1/category_tailgate/10_25_2025_sp_6_48_55_sp_PM_sp__lp_UTC-07_00_rp_.mp4",
90
- "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
91
- "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
92
- },
93
- {
94
- "id": "videos/site_1/category_tailgate/10_25_2025_sp_6_12_31_sp_PM_sp__lp_UTC-07_00_rp_",
95
- "video": "videos/site_1/category_tailgate/10_25_2025_sp_6_12_31_sp_PM_sp__lp_UTC-07_00_rp_.mp4",
96
- "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
97
- "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
98
- },
99
- {
100
- "id": "videos/site_1/category_tailgate/10_16_2025_sp_9_10_29_sp_PM_sp__lp_UTC-07_00_rp_",
101
- "video": "videos/site_1/category_tailgate/10_16_2025_sp_9_10_29_sp_PM_sp__lp_UTC-07_00_rp_.mp4",
102
- "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
103
- "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
104
- },
105
- {
106
- "id": "videos/site_1/category_tailgate/10_15_2025_sp_8_39_16_sp_PM_sp__lp_UTC-07_00_rp_",
107
- "video": "videos/site_1/category_tailgate/10_15_2025_sp_8_39_16_sp_PM_sp__lp_UTC-07_00_rp_.mp4",
108
- "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
109
- "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
110
- },
111
- {
112
- "id": "videos/site_1/category_badge/11_24_2025_sp_10_44_28_sp_AM_sp__lp_UTC-08_00_rp_",
113
- "video": "videos/site_1/category_badge/11_24_2025_sp_10_44_28_sp_AM_sp__lp_UTC-08_00_rp_.mp4",
114
- "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
115
- "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
116
- },
117
- {
118
- "id": "videos/site_1/category_badge/11_24_2025_sp_1_28_55_sp_PM_sp__lp_UTC-08_00_rp_",
119
- "video": "videos/site_1/category_badge/11_24_2025_sp_1_28_55_sp_PM_sp__lp_UTC-08_00_rp_.mp4",
120
- "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
121
- "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
122
- },
123
- {
124
- "id": "videos/site_1/category_tailgate/10_25_2025_sp_6_32_48_sp_PM_sp__lp_UTC-07_00_rp_",
125
- "video": "videos/site_1/category_tailgate/10_25_2025_sp_6_32_48_sp_PM_sp__lp_UTC-07_00_rp_.mp4",
126
- "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
127
- "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
128
- },
129
- {
130
- "id": "videos/site_1/category_badge/11_21_2025_sp_11_40_45_sp_AM_sp__lp_UTC-08_00_rp_",
131
- "video": "videos/site_1/category_badge/11_21_2025_sp_11_40_45_sp_AM_sp__lp_UTC-08_00_rp_.mp4",
132
- "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
133
- "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
134
- },
135
- {
136
- "id": "videos/site_1/category_tailgate/10_25_2025_sp_6_15_08_sp_PM_sp__lp_UTC-07_00_rp_",
137
- "video": "videos/site_1/category_tailgate/10_25_2025_sp_6_15_08_sp_PM_sp__lp_UTC-07_00_rp_.mp4",
138
- "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
139
- "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
140
- },
141
- {
142
- "id": "videos/site_1/category_tailgate/10_25_2025_sp_6_22_57_sp_PM_sp__lp_UTC-07_00_rp_",
143
- "video": "videos/site_1/category_tailgate/10_25_2025_sp_6_22_57_sp_PM_sp__lp_UTC-07_00_rp_.mp4",
144
- "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
145
- "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
146
- },
147
- {
148
- "id": "videos/site_1/category_tailgate/11_21_2025_sp_11_55_17_sp_AM_sp__lp_UTC-08_00_rp_",
149
- "video": "videos/site_1/category_tailgate/11_21_2025_sp_11_55_17_sp_AM_sp__lp_UTC-08_00_rp_.mp4",
150
- "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
151
- "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
152
- },
153
- {
154
- "id": "videos/site_1/category_tailgate/10_9_2025_sp_8_51_57_sp_PM_sp__lp_UTC-07_00_rp_",
155
- "video": "videos/site_1/category_tailgate/10_9_2025_sp_8_51_57_sp_PM_sp__lp_UTC-07_00_rp_.mp4",
156
- "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
157
- "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
158
- },
159
- {
160
- "id": "videos/site_1/category_badge/11_21_2025_sp_11_18_34_sp_AM_sp__lp_UTC-08_00_rp_",
161
- "video": "videos/site_1/category_badge/11_21_2025_sp_11_18_34_sp_AM_sp__lp_UTC-08_00_rp_.mp4",
162
- "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
163
- "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
164
- },
165
- {
166
- "id": "videos/site_1/category_badge/11_24_2025_sp_2_57_33_sp_PM_sp__lp_UTC-08_00_rp_",
167
- "video": "videos/site_1/category_badge/11_24_2025_sp_2_57_33_sp_PM_sp__lp_UTC-08_00_rp_.mp4",
168
- "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
169
- "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
170
- }
171
- ]
172
- }
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
data/event_verification/filtered/tailgating/location_b/test_annotation.json DELETED
@@ -1,136 +0,0 @@
1
- {
2
- "bcq": [
3
- {
4
- "id": "videos/redacted/evs_6a52f11dad",
5
- "video": "videos/redacted/evs_6a52f11dad.mp4",
6
- "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
7
- "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
8
- },
9
- {
10
- "id": "videos/redacted/evs_b561420691",
11
- "video": "videos/redacted/evs_b561420691.mp4",
12
- "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
13
- "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
14
- },
15
- {
16
- "id": "videos/redacted/evs_907fe737cf",
17
- "video": "videos/redacted/evs_907fe737cf.mp4",
18
- "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
19
- "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
20
- },
21
- {
22
- "id": "videos/redacted/evs_0ea91247d8",
23
- "video": "videos/redacted/evs_0ea91247d8.mp4",
24
- "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
25
- "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
26
- },
27
- {
28
- "id": "videos/redacted/evs_6ad1a891ad",
29
- "video": "videos/redacted/evs_6ad1a891ad.mp4",
30
- "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
31
- "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
32
- },
33
- {
34
- "id": "videos/redacted/evs_d0e459f682",
35
- "video": "videos/redacted/evs_d0e459f682.mp4",
36
- "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
37
- "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
38
- },
39
- {
40
- "id": "videos/redacted/evs_2e30648c0a",
41
- "video": "videos/redacted/evs_2e30648c0a.mp4",
42
- "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
43
- "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
44
- },
45
- {
46
- "id": "videos/redacted/evs_292daa255e",
47
- "video": "videos/redacted/evs_292daa255e.mp4",
48
- "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
49
- "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
50
- },
51
- {
52
- "id": "videos/redacted/evs_a9e180fff3",
53
- "video": "videos/redacted/evs_a9e180fff3.mp4",
54
- "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
55
- "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
56
- },
57
- {
58
- "id": "videos/redacted/evs_53f64ccbe8",
59
- "video": "videos/redacted/evs_53f64ccbe8.mp4",
60
- "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
61
- "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
62
- },
63
- {
64
- "id": "videos/redacted/evs_b982d3f339",
65
- "video": "videos/redacted/evs_b982d3f339.mp4",
66
- "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
67
- "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
68
- },
69
- {
70
- "id": "videos/redacted/evs_03018e0ecf",
71
- "video": "videos/redacted/evs_03018e0ecf.mp4",
72
- "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
73
- "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
74
- },
75
- {
76
- "id": "videos/redacted/evs_bf746e9608",
77
- "video": "videos/redacted/evs_bf746e9608.mp4",
78
- "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
79
- "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
80
- },
81
- {
82
- "id": "videos/redacted/evs_6e738337bc",
83
- "video": "videos/redacted/evs_6e738337bc.mp4",
84
- "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
85
- "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
86
- },
87
- {
88
- "id": "videos/redacted/evs_f979eb0318",
89
- "video": "videos/redacted/evs_f979eb0318.mp4",
90
- "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
91
- "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
92
- },
93
- {
94
- "id": "videos/redacted/evs_024ae78480",
95
- "video": "videos/redacted/evs_024ae78480.mp4",
96
- "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
97
- "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
98
- },
99
- {
100
- "id": "videos/redacted/evs_fa68a5a4f8",
101
- "video": "videos/redacted/evs_fa68a5a4f8.mp4",
102
- "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
103
- "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
104
- },
105
- {
106
- "id": "videos/redacted/evs_eed8192951",
107
- "video": "videos/redacted/evs_eed8192951.mp4",
108
- "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
109
- "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
110
- },
111
- {
112
- "id": "videos/redacted/evs_32231b0bd6",
113
- "video": "videos/redacted/evs_32231b0bd6.mp4",
114
- "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
115
- "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
116
- },
117
- {
118
- "id": "videos/redacted/evs_a713802c9d",
119
- "video": "videos/redacted/evs_a713802c9d.mp4",
120
- "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
121
- "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
122
- },
123
- {
124
- "id": "videos/redacted/evs_3f674e8c19",
125
- "video": "videos/redacted/evs_3f674e8c19.mp4",
126
- "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
127
- "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
128
- },
129
- {
130
- "id": "videos/redacted/evs_6a4da56832",
131
- "video": "videos/redacted/evs_6a4da56832.mp4",
132
- "system_prompt": "You are an expert AI assistant for video analysis. Your task is to accurately classify whether a surveillance video depicts **normal access** or **tailgating** behavior, based on the strict definitions below.\n\n# Category Definitions\n\n- **Normal Access**: \nA person (or group) enters a secure area **properly authenticated** (e.g., by using a badge, keycard, or biometric system). Only those with authorization enter. There is **no evidence of security breach** or abnormal entry. \n\n- **Tailgating**: \nOne or more individuals **enter a secure area without authorization** by following closely behind an authorized person who has legitimately gained access. The unauthorized individual does not use valid credentials but takes advantage of the door being open. This includes: \n- Following immediately behind someone with a badge swipe. \n- Entering as part of a group where only the first person authenticates. \n- Entering without any visible authentication while leveraging someone else's access.",
133
- "question": "Does the video depict tailgating behavior? Answer \"Yes\" or \"No\"."
134
- }
135
- ]
136
- }
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
data/event_verification/filtered/warehouse_near_miss/test_annotations.json DELETED
@@ -1,280 +0,0 @@
1
- {
2
- "bcq": [
3
- {
4
- "id": "positive/scene_07_01_00-23-52_to_00-25-33_GoPro1_Fork_Lift_stopped_while_person_crossing_the_isle_08-22",
5
- "video": "positive/scene_07_01_00-23-52_to_00-25-33_GoPro1_Fork_Lift_stopped_while_person_crossing_the_isle_08-22.mp4",
6
- "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
7
- "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
8
- },
9
- {
10
- "id": "positive/scene_08_01_00-00-46_to_00-02-20_GoPro1_Fork_Lift_crossing_while_person_running_in_front_of_it_01-15",
11
- "video": "positive/scene_08_01_00-00-46_to_00-02-20_GoPro1_Fork_Lift_crossing_while_person_running_in_front_of_it_01-15.mp4",
12
- "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
13
- "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
14
- },
15
- {
16
- "id": "positive/scene_08_02_00-02-20_to_00-04-56_GoPro1_Fork_Lift_crossing_while_person_running_in_front_of_it_08-22",
17
- "video": "positive/scene_08_02_00-02-20_to_00-04-56_GoPro1_Fork_Lift_crossing_while_person_running_in_front_of_it_08-22.mp4",
18
- "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
19
- "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
20
- },
21
- {
22
- "id": "positive/scene_08_03_00-04-56_to_00-08-15_GoPro1_Fork_Lift_crossing_while_person_running_in_front_of_it_04-18",
23
- "video": "positive/scene_08_03_00-04-56_to_00-08-15_GoPro1_Fork_Lift_crossing_while_person_running_in_front_of_it_04-18.mp4",
24
- "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
25
- "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
26
- },
27
- {
28
- "id": "positive/scene_09_01_00-08-15_to_00-10-22_GoPro1_Fork_Lift_moving_while_person_on_the_phone_crossing_the_isle_06-20",
29
- "video": "positive/scene_09_01_00-08-15_to_00-10-22_GoPro1_Fork_Lift_moving_while_person_on_the_phone_crossing_the_isle_06-20.mp4",
30
- "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
31
- "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
32
- },
33
- {
34
- "id": "positive/scene_10_01_00-10-22_to_00-13-12_GoPro1_Fork_Lift_moving_while_person_crossing_the_isle_06-20",
35
- "video": "positive/scene_10_01_00-10-22_to_00-13-12_GoPro1_Fork_Lift_moving_while_person_crossing_the_isle_06-20.mp4",
36
- "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
37
- "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
38
- },
39
- {
40
- "id": "positive/scene_11_01_00-13-12_to_00-16-16_GoPro1_Fork_Lift_moving_while_multiple_people_in_the_scene_04-22",
41
- "video": "positive/scene_11_01_00-13-12_to_00-16-16_GoPro1_Fork_Lift_moving_while_multiple_people_in_the_scene_04-22.mp4",
42
- "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
43
- "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
44
- },
45
- {
46
- "id": "positive/scene_12_01_00-16-16_to_00-17-31_GoPro1_Fork_Lift_moving_while_person_walking_behind_the_forklift_06-20",
47
- "video": "positive/scene_12_01_00-16-16_to_00-17-31_GoPro1_Fork_Lift_moving_while_person_walking_behind_the_forklift_06-20.mp4",
48
- "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
49
- "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
50
- },
51
- {
52
- "id": "positive/scene_12_02_00-17-31_to_00-19-50_GoPro1_Fork_Lift_moving_while_person_walking_behind_the_forklift_02-16",
53
- "video": "positive/scene_12_02_00-17-31_to_00-19-50_GoPro1_Fork_Lift_moving_while_person_walking_behind_the_forklift_02-16.mp4",
54
- "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
55
- "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
56
- },
57
- {
58
- "id": "positive/scene_14_01_00-19-50_to_00-22-54_GoPro1_Fork_Lift_moving_while_person_walking_behind_the_forklift_04-18",
59
- "video": "positive/scene_14_01_00-19-50_to_00-22-54_GoPro1_Fork_Lift_moving_while_person_walking_behind_the_forklift_04-18.mp4",
60
- "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
61
- "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
62
- },
63
- {
64
- "id": "positive/scene_16_01_00-22-54_to_00-25-38_GoPro1_person_walking_in_front_of_fork_lift_04-48",
65
- "video": "positive/scene_16_01_00-22-54_to_00-25-38_GoPro1_person_walking_in_front_of_fork_lift_04-48.mp4",
66
- "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
67
- "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
68
- },
69
- {
70
- "id": "positive/scene_17_01_00-25-38_to_00-27-32_GoPro1_person_running_in_front_of_fork_lift_02-16",
71
- "video": "positive/scene_17_01_00-25-38_to_00-27-32_GoPro1_person_running_in_front_of_fork_lift_02-16.mp4",
72
- "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
73
- "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
74
- },
75
- {
76
- "id": "positive/scene_17_02_00-27-32_to_00-30-55_GoPro1_person_running_in_front_of_fork_lift_02-26",
77
- "video": "positive/scene_17_02_00-27-32_to_00-30-55_GoPro1_person_running_in_front_of_fork_lift_02-26.mp4",
78
- "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
79
- "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
80
- },
81
- {
82
- "id": "positive/scene_18_01_00-30-55_to_00-33-57_GoPro1_person_jumping_to_not_get_hit_by_the_forklift_00-20",
83
- "video": "positive/scene_18_01_00-30-55_to_00-33-57_GoPro1_person_jumping_to_not_get_hit_by_the_forklift_00-20.mp4",
84
- "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
85
- "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
86
- },
87
- {
88
- "id": "positive/scene_19_01_00-33-57_to_00-35-41_GoPro1_fork_lift_moving_backwards_person_cutting_in_front_of_the_fo_04-24",
89
- "video": "positive/scene_19_01_00-33-57_to_00-35-41_GoPro1_fork_lift_moving_backwards_person_cutting_in_front_of_the_fo_04-24.mp4",
90
- "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
91
- "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
92
- },
93
- {
94
- "id": "positive/scene_20_01_00-35-41_to_00-37-23_GoPro1_fork_lift_going_backwards_person_running_passed_04-22",
95
- "video": "positive/scene_20_01_00-35-41_to_00-37-23_GoPro1_fork_lift_going_backwards_person_running_passed_04-22.mp4",
96
- "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
97
- "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
98
- },
99
- {
100
- "id": "positive/scene_21_01_00-37-23_to_00-39-30_GoPro1_fork_lift_going_backwards_person_stops_06-24",
101
- "video": "positive/scene_21_01_00-37-23_to_00-39-30_GoPro1_fork_lift_going_backwards_person_stops_06-24.mp4",
102
- "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
103
- "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
104
- },
105
- {
106
- "id": "positive/scene_22_01_00-39-30_to_00-45-36_GoPro1_fork_lift_moving_person_hesitating_and_stepping_back_01-20",
107
- "video": "positive/scene_22_01_00-39-30_to_00-45-36_GoPro1_fork_lift_moving_person_hesitating_and_stepping_back_01-20.mp4",
108
- "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
109
- "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
110
- },
111
- {
112
- "id": "positive/scene_23_01_00-45-36_to_00-49-03_GoPro1_boxes_blocking_the_view_of_the_driver_and_person_crossing_06-26",
113
- "video": "positive/scene_23_01_00-45-36_to_00-49-03_GoPro1_boxes_blocking_the_view_of_the_driver_and_person_crossing_06-26.mp4",
114
- "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
115
- "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
116
- },
117
- {
118
- "id": "positive/scene_25_01_00-02-02_to_00-05-05_GoPro1_person_working_on_boxes_while_fork_lift_approaches_06-30",
119
- "video": "positive/scene_25_01_00-02-02_to_00-05-05_GoPro1_person_working_on_boxes_while_fork_lift_approaches_06-30.mp4",
120
- "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
121
- "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
122
- },
123
- {
124
- "id": "positive/scene_26_01_00-05-05_to_00-08-50_GoPro1_same_as_above_person_jumping_05-24",
125
- "video": "positive/scene_26_01_00-05-05_to_00-08-50_GoPro1_same_as_above_person_jumping_05-24.mp4",
126
- "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
127
- "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
128
- },
129
- {
130
- "id": "positive/scene_27_01_00-08-50_to_00-15-25_GoPro1_person_bending_down_fork_lift_moving_forward_10-30",
131
- "video": "positive/scene_27_01_00-08-50_to_00-15-25_GoPro1_person_bending_down_fork_lift_moving_forward_10-30.mp4",
132
- "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
133
- "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
134
- },
135
- {
136
- "id": "negative/Scene_13_S13T1_C2_CS_S13T1_1-12-11-59_chunk_5__event_005_5",
137
- "video": "negative/Scene_13_S13T1_C2_CS_S13T1_1-12-11-59_chunk_5__event_005_5.mp4",
138
- "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
139
- "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
140
- },
141
- {
142
- "id": "negative/Scene_13_S13T3_C5_AS_S13T3_01-18-12-10_chunk_2__event_001_1",
143
- "video": "negative/Scene_13_S13T3_C5_AS_S13T3_01-18-12-10_chunk_2__event_001_1.mp4",
144
- "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
145
- "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
146
- },
147
- {
148
- "id": "negative/Scene_13_S13T4_C4_AS_S13T4_1-12-12-28_chunk_5__event_008_8",
149
- "video": "negative/Scene_13_S13T4_C4_AS_S13T4_1-12-12-28_chunk_5__event_008_8.mp4",
150
- "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
151
- "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
152
- },
153
- {
154
- "id": "negative/Scene_13_S13T4_C4_AS_S13T4_1-12-12-28_chunk_6__event_001_1",
155
- "video": "negative/Scene_13_S13T4_C4_AS_S13T4_1-12-12-28_chunk_6__event_001_1.mp4",
156
- "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
157
- "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
158
- },
159
- {
160
- "id": "negative/Scene_13_S13T4_C5_AS_S13T4_00-58-12-14_chunk_5__event_004_4",
161
- "video": "negative/Scene_13_S13T4_C5_AS_S13T4_00-58-12-14_chunk_5__event_004_4.mp4",
162
- "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
163
- "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
164
- },
165
- {
166
- "id": "negative/Scene_13_S13T4_C6_AS_S13T4_00-43-11-59_chunk_1__event_004_4",
167
- "video": "negative/Scene_13_S13T4_C6_AS_S13T4_00-43-11-59_chunk_1__event_004_4.mp4",
168
- "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
169
- "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
170
- },
171
- {
172
- "id": "negative/Scene_13_S13T4_C6_AS_S13T4_00-43-11-59_chunk_5__event_004_4",
173
- "video": "negative/Scene_13_S13T4_C6_AS_S13T4_00-43-11-59_chunk_5__event_004_4.mp4",
174
- "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
175
- "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
176
- },
177
- {
178
- "id": "negative/Scene_13_S13T4_C6_AS_S13T4_00-43-11-59_chunk_6__event_001_1",
179
- "video": "negative/Scene_13_S13T4_C6_AS_S13T4_00-43-11-59_chunk_6__event_001_1.mp4",
180
- "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
181
- "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
182
- },
183
- {
184
- "id": "negative/Scene_13_S13T5_C2_AS_S13T5_0-51-11-39_chunk_5__event_004_4",
185
- "video": "negative/Scene_13_S13T5_C2_AS_S13T5_0-51-11-39_chunk_5__event_004_4.mp4",
186
- "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
187
- "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
188
- },
189
- {
190
- "id": "negative/Scene_13_S13T5_C3_AS_S13T5_0-53-11-38_chunk_5__event_004_4",
191
- "video": "negative/Scene_13_S13T5_C3_AS_S13T5_0-53-11-38_chunk_5__event_004_4.mp4",
192
- "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
193
- "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
194
- },
195
- {
196
- "id": "negative/Scene_13_S13T5_C4_AS_S13T5_0-53-11-39_chunk_5__event_004_4",
197
- "video": "negative/Scene_13_S13T5_C4_AS_S13T5_0-53-11-39_chunk_5__event_004_4.mp4",
198
- "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
199
- "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
200
- },
201
- {
202
- "id": "negative/Scene_13_S13T5_C6_AS_S13T5_00-29-11-15_chunk_5__event_003_3",
203
- "video": "negative/Scene_13_S13T5_C6_AS_S13T5_00-29-11-15_chunk_5__event_003_3.mp4",
204
- "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
205
- "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
206
- },
207
- {
208
- "id": "negative/Scene_4_S4T4_C2_CV_S4T4_00-54-10-48_chunk_5__event_001_1",
209
- "video": "negative/Scene_4_S4T4_C2_CV_S4T4_00-54-10-48_chunk_5__event_001_1.mp4",
210
- "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
211
- "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
212
- },
213
- {
214
- "id": "negative/Scene_4_S4T4_C4_CS_S4T4_00-54-10-48_chunk_4__event_003_3",
215
- "video": "negative/Scene_4_S4T4_C4_CS_S4T4_00-54-10-48_chunk_4__event_003_3.mp4",
216
- "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
217
- "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
218
- },
219
- {
220
- "id": "negative/Scene_4_S4T4_C6_CS_S4T4_00-54-10-48_chunk_1__event_004_4",
221
- "video": "negative/Scene_4_S4T4_C6_CS_S4T4_00-54-10-48_chunk_1__event_004_4.mp4",
222
- "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
223
- "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
224
- },
225
- {
226
- "id": "negative/Scene_4_S4T4_C6_CS_S4T4_00-54-10-48_chunk_5__event_002_2",
227
- "video": "negative/Scene_4_S4T4_C6_CS_S4T4_00-54-10-48_chunk_5__event_002_2.mp4",
228
- "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
229
- "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
230
- },
231
- {
232
- "id": "negative/scene_01_01_00-00-00_to_00-07-34_GoPro1_Calibration_with_people_walking_around_06-26",
233
- "video": "negative/scene_01_01_00-00-00_to_00-07-34_GoPro1_Calibration_with_people_walking_around_06-26.mp4",
234
- "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
235
- "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
236
- },
237
- {
238
- "id": "negative/scene_02_01_00-07-34_to_00-11-38_GoPro1_Forklifts_being_moved_out_of_the_way_06-26",
239
- "video": "negative/scene_02_01_00-07-34_to_00-11-38_GoPro1_Forklifts_being_moved_out_of_the_way_06-26.mp4",
240
- "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
241
- "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
242
- },
243
- {
244
- "id": "negative/scene_04_01_00-11-38_to_00-19-46_GoPro1_Forklift_entering_the_aisle_no_pedestrians_around_06-26",
245
- "video": "negative/scene_04_01_00-11-38_to_00-19-46_GoPro1_Forklift_entering_the_aisle_no_pedestrians_around_06-26.mp4",
246
- "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
247
- "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
248
- },
249
- {
250
- "id": "negative/scene_05_01_00-19-46_to_00-21-03_GoPro1_Fork_Lift_crossing_people_crossing_afterwards_06-26",
251
- "video": "negative/scene_05_01_00-19-46_to_00-21-03_GoPro1_Fork_Lift_crossing_people_crossing_afterwards_06-26.mp4",
252
- "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
253
- "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
254
- },
255
- {
256
- "id": "negative/scene_06_01_00-21-03_to_00-23-52_GoPro1_Fork_Lift_crossing_people_following_the_forklift_06-26",
257
- "video": "negative/scene_06_01_00-21-03_to_00-23-52_GoPro1_Fork_Lift_crossing_people_following_the_forklift_06-26.mp4",
258
- "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
259
- "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
260
- },
261
- {
262
- "id": "negative/scene_28_01_00-15-25_to_00-27-58_GoPro1_boxes_falling_04-22",
263
- "video": "negative/scene_28_01_00-15-25_to_00-27-58_GoPro1_boxes_falling_04-22.mp4",
264
- "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
265
- "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
266
- },
267
- {
268
- "id": "negative/scene_29_01_00-01-07_to_00-10-18_GoPro1_driver_picks_up_trash_00-50",
269
- "video": "negative/scene_29_01_00-01-07_to_00-10-18_GoPro1_driver_picks_up_trash_00-50.mp4",
270
- "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
271
- "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
272
- },
273
- {
274
- "id": "negative/scene_29_01_00-09-27_to_00-12-53_GoPro1_driver_picks_up_trash_00-20",
275
- "video": "negative/scene_29_01_00-09-27_to_00-12-53_GoPro1_driver_picks_up_trash_00-20.mp4",
276
- "system_prompt": "You are an industrial safety analyst reviewing warehouse video. Determine whether the clip depicts a near-miss collision between a person and a forklift (or other powered vehicle). Answer Yes or No.",
277
- "question": "Please tell whether the video contains near-miss collision between person and forklift. Your final answer should be either Yes or No."
278
- }
279
- ]
280
- }
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_tailgate → videos}/10_15_2025_sp_8_35_08_sp_PM_sp__lp_UTC-07_00_rp_.mp4 RENAMED
File without changes
data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_tailgate → videos}/10_15_2025_sp_8_38_19_sp_PM_sp__lp_UTC-07_00_rp_.mp4 RENAMED
File without changes
data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_tailgate → videos}/10_15_2025_sp_8_39_16_sp_PM_sp__lp_UTC-07_00_rp_.mp4 RENAMED
File without changes
data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_tailgate → videos}/10_16_2025_sp_9_00_13_sp_PM_sp__lp_UTC-07_00_rp_.mp4 RENAMED
File without changes
data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_tailgate → videos}/10_16_2025_sp_9_10_29_sp_PM_sp__lp_UTC-07_00_rp_.mp4 RENAMED
File without changes
data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_tailgate → videos}/10_25_2025_sp_6_09_05_sp_PM_sp__lp_UTC-07_00_rp_.mp4 RENAMED
File without changes
data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_tailgate → videos}/10_25_2025_sp_6_12_31_sp_PM_sp__lp_UTC-07_00_rp_.mp4 RENAMED
File without changes
data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_tailgate → videos}/10_25_2025_sp_6_15_08_sp_PM_sp__lp_UTC-07_00_rp_.mp4 RENAMED
File without changes
data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_tailgate → videos}/10_25_2025_sp_6_22_57_sp_PM_sp__lp_UTC-07_00_rp_.mp4 RENAMED
File without changes
data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_tailgate → videos}/10_25_2025_sp_6_30_25_sp_PM_sp__lp_UTC-07_00_rp_.mp4 RENAMED
File without changes
data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_tailgate → videos}/10_25_2025_sp_6_32_48_sp_PM_sp__lp_UTC-07_00_rp_.mp4 RENAMED
File without changes
data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_tailgate → videos}/10_25_2025_sp_6_46_58_sp_PM_sp__lp_UTC-07_00_rp_.mp4 RENAMED
File without changes
data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_tailgate → videos}/10_25_2025_sp_6_48_55_sp_PM_sp__lp_UTC-07_00_rp_.mp4 RENAMED
File without changes
data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_tailgate → videos}/10_8_2025_sp_8_38_03_sp_PM_sp__lp_UTC-07_00_rp_.mp4 RENAMED
File without changes
data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_tailgate → videos}/10_8_2025_sp_8_43_54_sp_PM_sp__lp_UTC-07_00_rp_.mp4 RENAMED
File without changes
data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_tailgate → videos}/10_9_2025_sp_8_48_30_sp_PM_sp__lp_UTC-07_00_rp_.mp4 RENAMED
File without changes
data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_tailgate → videos}/10_9_2025_sp_8_51_57_sp_PM_sp__lp_UTC-07_00_rp_.mp4 RENAMED
File without changes
data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_badge → videos}/11_20_2025_sp_1_01_55_sp_PM_sp__lp_UTC-08_00_rp_.mp4 RENAMED
File without changes
data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_badge → videos}/11_20_2025_sp_4_13_08_sp_PM_sp__lp_UTC-08_00_rp_.mp4 RENAMED
File without changes
data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_badge → videos}/11_21_2025_sp_11_18_34_sp_AM_sp__lp_UTC-08_00_rp_.mp4 RENAMED
File without changes
data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_badge → videos}/11_21_2025_sp_11_40_45_sp_AM_sp__lp_UTC-08_00_rp_.mp4 RENAMED
File without changes
data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_tailgate → videos}/11_21_2025_sp_11_55_17_sp_AM_sp__lp_UTC-08_00_rp_.mp4 RENAMED
File without changes
data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_tailgate → videos}/11_21_2025_sp_11_56_03_sp_AM_sp__lp_UTC-08_00_rp_.mp4 RENAMED
File without changes
data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_badge → videos}/11_24_2025_sp_10_23_17_sp_AM_sp__lp_UTC-08_00_rp_.mp4 RENAMED
File without changes
data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_badge → videos}/11_24_2025_sp_10_44_28_sp_AM_sp__lp_UTC-08_00_rp_.mp4 RENAMED
File without changes
data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_badge → videos}/11_24_2025_sp_1_28_55_sp_PM_sp__lp_UTC-08_00_rp_.mp4 RENAMED
File without changes
data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_badge → videos}/11_24_2025_sp_2_57_33_sp_PM_sp__lp_UTC-08_00_rp_.mp4 RENAMED
File without changes
data/event_verification/{filtered/tailgating/location_a/videos/site_1/category_badge → videos}/11_24_2025_sp_9_44_18_sp_AM_sp__lp_UTC-08_00_rp_.mp4 RENAMED
File without changes
data/event_verification/{filtered/metropolis_event_verification/safety_chunks → videos}/GX010011_Clip_8_27.mp4 RENAMED
File without changes
data/event_verification/{filtered/metropolis_event_verification/safety_chunks → videos}/GX010011_Clip_9_28.mp4 RENAMED
File without changes
data/event_verification/{filtered/metropolis_event_verification/traffic_chunks → videos}/IpgfZf6Y2BE_14.mp4 RENAMED
File without changes
data/event_verification/{filtered/metropolis_event_verification/traffic_chunks → videos}/IpgfZf6Y2BE_15.mp4 RENAMED
File without changes
data/event_verification/{filtered/metropolis_event_verification/traffic_chunks → videos}/LUPZNgg5idk_13.mp4 RENAMED
File without changes
data/event_verification/{filtered/metropolis_event_verification/traffic_chunks → videos}/MmsgbcpWn-k_19.mp4 RENAMED
File without changes
data/event_verification/{filtered/metropolis_event_verification/traffic_chunks → videos}/MmsgbcpWn-k_20.mp4 RENAMED
File without changes
data/event_verification/{filtered/metropolis_event_verification/traffic_chunks → videos}/MmsgbcpWn-k_21.mp4 RENAMED
File without changes
data/event_verification/{filtered/metropolis_event_verification/traffic_chunks → videos}/NOALQmAB4yE_16.mp4 RENAMED
File without changes
data/event_verification/{filtered/metropolis_event_verification/traffic_chunks → videos}/NOALQmAB4yE_24.mp4 RENAMED
File without changes
data/event_verification/{filtered/metropolis_event_verification/traffic_chunks → videos}/SEb7p5oszeM_17.mp4 RENAMED
File without changes