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microanomaly

A compact development set for finding anomalies in fixed-camera streams. Each camera is a 24/7 live stream with one real anomaly event somewhere in its footage. There is no user query — the task is intrinsic to the camera. Two evals run over each camera's videos:

  1. Find the anomaly — flag the anomalous video(s) among everything the camera recorded (scored against annotations/judgments.jsonl).
  2. Generate claims — describe the anomaly video(s) (scored against annotations/reference.json).

annotations/queries.jsonl gives the per-camera grouping (which videos belong to each camera) that both evals run over.

It is a focused spin-off of microvent: the 4 cameras here are the 4 anomaly-sourced topics in microvent, but where microvent kept only a handful of chunks per camera, microanomaly pulls every chunk from each camera straight out of the multivent-raw shards.


At a glance

Cameras (topics / queries) 4
Source videos (captures) 379
Total chunks 474
Positives (relevance:1) 11
Negatives (relevance:0) 463
Total duration ~23.5 h
On disk ~21.5 GB
Shards 6

A chunk is the unit of retrieval (≤300 s slice of one source capture); single-capture sources are one chunk, longer ones split. Every artifact is keyed by chunk_id. The IDs are the multivent-raw anonymized identifiers, so this set joins cleanly with any multivent-raw-derived artifact.


Directory layout

microanomaly/
├── README.md
├── shard_mapping.csv            ← per-chunk crosswalk: multivent-raw source → microanomaly shard
│
├── annotations/                 ← public eval inputs
│   ├── queries.jsonl            per-camera task + video grouping (4 rows)
│   ├── judgments.jsonl          474 rows — full same-camera IR pool
│   └── reference.json           4 topics, MiRAGE claims + chunk-level evidence
│
├── scripts/                     ← tooling (see scripts/README.md)
│   ├── serve.py                 zero-dependency web viewer
│   ├── slurm_serve.sh           run the viewer as a 1-hour CPU SLURM job
│   ├── build_queries.py         (re)build annotations/queries.jsonl grouping
│   ├── import_live_viewer_assets.py   populate viewer_assets/ (copy from live_viewer)
│   ├── generate_assets.py       populate viewer_assets/ (from-scratch, ffmpeg)
│   └── README.md
│
├── viewer_assets/               ← optional browsing aids (generated)
│   ├── posters/<camera>/<video_id>.jpg
│   ├── vtimelapse/<camera>/<video_id>.mp4
│   └── cam_timelapse/<camera>.mp4
│
└── videos/                      ← .mp4 + per-chunk JSON
    ├── catalog.csv
    └── shard_000000.tar … shard_000005.tar

Viewer

scripts/serve.py is a self-contained (stdlib-only) web browser: per camera it states the find-the-anomaly task, flags the relevant anomaly chunk(s), lists the reference claims, and plays any chunk inline by streaming it from the shards. With viewer_assets/ generated, tiles get poster thumbnails + hover-preview and each camera page opens with a history timelapse.

Run it on a compute node as a 1-hour CPU SLURM job, then tunnel in:

# from the dataset root (microanomaly/)
sbatch scripts/slurm_serve.sh                  # CPU, 1-hour cap, port 8083
squeue -u $USER -n manom_serve                 # NODELIST = <compute-host>
ssh -N -L 8083:<compute-host>:8083 $USER@<cluster-login>
# open http://localhost:8083/   ·   stop early: scancel <jobid>

Browsing aids are optional (the viewer works without them). To populate viewer_assets/: python3 scripts/import_live_viewer_assets.py (fast copy from the live_viewer) or python3 scripts/generate_assets.py (from scratch, ffmpeg). Full details — routes, asset layout, local run — in scripts/README.md.

The private reverse-mapping (real camera IDs, capture timestamps, source filenames) lives outside this dataset, in the sibling microanomaly_private/ — it is not part of the release.


The 4 cameras / anomalies

camera anomaly_id event query lang chunks videos size
cam_00 anom_001 UK police van on the Abbey Road zebra crossing english 47 24 1.55 GB
cam_01 anom_002 car parked off-road in a park, Ust-Kut, Russia russian 89 69 2.30 GB
cam_02 anom_004 pier camera abruptly blocked by a blue container, Japan japanese 146 131 2.90 GB
cam_03 anom_005 person sitting on the tram tracks, Netherlands dutch 192 155 14.73 GB

Each camera maps to a contiguous shard range (see Sharding).


Identifiers

field example identifies
chunk_id KwNWdCt382cjtmDB_0000 one chunk; the join key across all artifacts
video_id KwNWdCt382cjtmDB the source capture the chunk came from
camera cam_00 the anonymized fixed camera (1 per anomaly)
anomaly_id anom_001 the anomaly event (stable label from the candidate set)
capture_index 0 chronological rank of this capture within its camera (0-based)
  • chunk_id == f"{video_id}_{chunk_index:04d}", always 4-digit padded.
  • camera and capture_index are anonymized stand-ins for the real YouTube camera ID and capture timestamp; the private mapping is held separately.
  • No ID starts with -, so filenames are safe for tar/find/xargs.

Annotations (annotations/)

queries.jsonl — 4 rows (the per-camera task + grouping)

This is not a retrieval queries file — there is no user query. Each row is one eval unit (one camera / anomaly) and lists which videos/chunks belong to that camera: the candidate pool both evals run over. One object per camera:

{
  "query_id": "28",
  "camera": "cam_00",
  "anomaly_id": "anom_001",
  "topic_id": "TMrQshDs8aH0",
  "n_videos": 24,
  "n_chunks": 47,
  "videos": [
    {"video_id": "KwNWdCt382cjtmDB", "capture_index": 0,
     "chunks": ["KwNWdCt382cjtmDB_0000", "KwNWdCt382cjtmDB_0001"]},
    ...
  ]
}

It is answer-agnostic — it enumerates every video/chunk of the camera but never marks which are anomalous (that's judgments.jsonl / reference.json). query_id is kept as the stable join key into those two files. Regenerate with scripts/build_queries.py. videos are ordered by capture_index (chronological); chunks by chunk index within a video.

judgments.jsonl — 474 rows (the IR pool)

The retrieval pool for each query is the full set of that camera's chunks, judged exhaustively: the anomaly footage is relevant, everything else from the same camera is a hard negative.

Positive (relevance:1):

{"query_id": "28", "chunk_id": "PxRXEWfLiL3w_E7y_0000", "relevance": 1, "language": "english"}

Negative (relevance:0) — every negative is by construction same_camera; the subset originally mined by a microvent retrieval signal carries its rank_source:

{"query_id": "28", "chunk_id": "JER-mXhTCCEY0kPx_0000", "relevance": 0,
 "language": "english", "distractor_type": "same_camera", "rank_source": "qwen3vl8b"}

Per query: pool = all camera chunks; positives are the anomaly capture's chunk(s).

query camera pool positives negatives (mined by microvent)
q28 anom_001 cam_00 47 4 43 10
q29 anom_002 cam_01 89 2 87 10
q30 anom_004 cam_02 146 3 143 10
q31 anom_005 cam_03 192 2 190 10

Positives are at capture grain expanded to chunks: every chunk of a relevant capture is positive (so a 2-chunk anomaly capture contributes 2 positive rows). In this release every one of the 40 mined negatives (10 per query) carries rank_source: qwen3vl8b (visual keyframe embedding) — the visual signal alone surfaced the seed pool. The field may also take ppocr (OCR) or qwen3asr (ASR) from microvent's other retrieval signals, but none were selected here.

reference.json — 4 topics

MiRAGE ground truth. {version, topics:[...]}; each topic carries the oracle chunks (== the query's positives) and a claims list, where each claim maps supporting chunk_id → [modalities] (video-text, video-non-text, audio-speech, audio-non-speech). Oracle/evidence chunks are all within the topic's own camera.

import json
ref = json.load(open("annotations/reference.json"))
topics_by_id = {t["topic_id"]: t for t in ref["topics"]}

videos/

<chunk_id>.mp4 + <chunk_id>.json (per-chunk metadata: duration, resolution, fps, source-chunk offsets) per record, packed contiguously. catalog.csv columns:

chunk_id, video_id, chunk_index, chunk_count, shard_index,
duration_sec, chunk_start_sec, chunk_end_sec, size_bytes, vcodec, acodec,
camera, anomaly_id, capture_index

All video is H.264. 6 of 474 chunks have no audio stream (acodec=NONE, silent live captures) — faithful to the source. Chunks were byte-copied out of the multivent-raw shards (-c copy, no re-encode; md5-verified).


shard_mapping.csv

Per-chunk crosswalk from the source multivent-raw shards to the microanomaly shards — both human-readable provenance and the driver for rebuilding:

anomaly_id, camera, capture_index, video_id, chunk_id, chunk_index, chunk_count,
size_bytes, src_shard, src_shard_index, dst_shard, dst_shard_index

src_shard is the chunk's location in /exp/scale26/datasets/multivent-raw/videos/; dst_shard is its microanomaly shard. Rows are in pack order (dst_shard → capture_index → video_id → chunk_index).


Sharding

6 shards, one camera per shard except the large tram camera, which is split into 3 (~5 GB cap). A source capture's chunks never span shards; chunks are ordered by capture datetime.

shard camera chunks size
shard_000000.tar cam_00 (anom_001) 47 1.55 GB
shard_000001.tar cam_01 (anom_002) 89 2.30 GB
shard_000002.tar cam_02 (anom_004) 146 2.90 GB
shard_000003.tar cam_03 (anom_005), part 1 62 4.95 GB
shard_000004.tar cam_03 (anom_005), part 2 69 4.97 GB
shard_000005.tar cam_03 (anom_005), part 3 61 4.81 GB

Provenance protection

Camera identifiers are anonymized (cam_00cam_03) and capture timestamps are replaced by a per-camera capture_index; original YouTube camera IDs, capture datetimes, and source filenames are not in the release. chunk_id / video_id are the already-anonymized multivent-raw identifiers. The private mapping back to original identifiers is held in the sibling microanomaly_private/ and is not redistributed.

Note: query/persona/background text describes the underlying real events in natural language, by design (these are the eval inputs).


Provenance / build

Built from /exp/scale26/datasets/multivent-raw/videos/ (the 4 anomaly cameras, all captures), driven by the authoritative webdataset_private/catalog_v2.csv mapping. Annotations were translated from microvent (the 4 anomaly topics) into multivent-raw IDs via source_id+chunk_index. Completeness was verified three ways (built catalog, post-redownload source manifest, physical tar membership) — all 474 chunks confirmed present.