ACaM-Bench / README.md
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metadata
license: cc-by-nc-sa-4.0
language:
  - en
task_categories:
  - multiple-choice
  - visual-question-answering
tags:
  - video
  - camera-movement
  - vision-language
size_categories:
  - 1K<n<100K
configs:
  - config_name: real
    data_files:
      - split: test
        path: real_video_test.jsonl
  - config_name: syn
    data_files:
      - split: test
        path: syn_video_test.jsonl
  - config_name: binary
    data_files:
      - split: test
        path: binary_test.jsonl

ACaM-Bench

ACaM-Bench is an atomic, multiple-choice benchmark for evaluating whether vision-language models can recognize fine-grained camera movements in real-world and synthetic videos. It covers a two-level cinematographic taxonomy of 17 atomic camera movement classes spanning translations, rotations, focal-length changes, static shots, and object-centric movements.

Splits

Split # Items Task Source
real 1464 4-way multiple choice Curated real-world clips
syn 1179 4-way multiple choice AI-generated clips (Veo 3.1 fast preview)
binary 1510 Yes/No question Synthetic clips (balanced 755 Yes / 755 No)

Note on externally-sourced clips (not redistributed). Some real items are sourced from other benchmarks and, to respect their original licenses, are not redistributed here. Filenames in the JSONLs match the originals — download the clips from each source and place them under the paths below:

Source Items Place under
CameraBench 454 real_videos/Camera_Motion_Bench/videos/
ShotBench 359 real_videos/ShotBench/video/
CineTechBench 79 real_videos/CineTechBench/dataset/clips/

The remaining real clips (FavorBench, MotionBench, self-collected) and all synthetic clips are included in the archives.

Dataset Structure

ACaM-Bench/
├── real_video_test.jsonl      # 1464 entries (4-way MCQ, real)
├── syn_video_test.jsonl       # 1179 entries (4-way MCQ, synthetic)
├── binary_test.jsonl          # 1510 entries (Yes/No, synthetic)
├── real_videos.zip            # real-world video files (unzip in place)
├── syn_videos.zip             # synthetic video files, also used by binary (unzip in place)
└── train.zip                  # training videos archive (see "Training data")

The video files are distributed as zip archives. Each archive already contains its top-level folder, so unzip them in the repo root and the paths in the JSONLs (e.g. real_videos/foo.mp4, syn_videos/bar.mp4) resolve as-is:

unzip real_videos.zip   # -> real_videos/...
unzip syn_videos.zip    # -> syn_videos/...

Fields

Each line in the JSONL is a JSON object:

Field Type Description
image string Relative path to the video file (e.g. real_videos/foo.mp4)
camera movement list[string] Ground-truth camera movement label(s)
question string The natural-language question shown to the model
options dict Four answer choices keyed AD
correct_answer string Letter of the correct option
source string Origin of the clip
duration float Video duration in seconds (real split only)

binary split fields

The binary split uses a simpler schema (no options / correct_answer):

Field Type Description
image string Relative path to the video file (e.g. syn_videos/foo.mp4)
camera_motion list[string] The motion the question asks about
question string A Yes/No question, e.g. "Does the camera perform an arc movement?"
label string Ground-truth answer, Yes or No
source string Origin of the clip

Training data

The training videos are provided as a single archive, train.zip. The archive contains the per-source folders directly (e.g. DeDopShots/, …), so extract it into a folder named training_videos/ to match the relative paths used by the training annotations:

# download from the dataset repo, then:
mkdir -p training_videos
unzip train.zip -d training_videos/
# results in training_videos/DeDopShots/..., etc.

The accompanying training annotations (train.json, released with the code) refer to videos via paths like training_videos/<source>/<file>.mp4, which resolve once the archive is extracted as above.

Note on externally-sourced training data (not redistributed). To respect their original licenses, some training videos are not redistributed here — train.zip excludes them. To use the full training set, obtain the clips from each source and place them under the paths below (filenames in train.json match):

Source Place under
CameraBench training_videos/CameraBench_train_videos/
ShotQA training_videos/ShotQA_Training/