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license: cc-by-nc-sa-4.0 |
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--- |
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# E.T. Bench |
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[arXiv](https://arxiv.org/abs/2409.18111) | [Project Page](https://polyu-chenlab.github.io/etbench) | [GitHub](https://github.com/PolyU-ChenLab/ETBench) |
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E.T. Bench is a large-scale and high-quality benchmark for open-ended event-level video understanding. Categorized within a 3-level task taxonomy, it encompasses 7.3K samples under 12 tasks with 7K videos (251.4h total length) under 8 domains, providing comprehensive evaluations on 4 essential capabilities for time-sensitive video understanding. |
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## ๐ฆ Data Preparation |
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You may download the evaluation kit for E.T. Bench using the following command. |
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``` |
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git lfs install |
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git clone [email protected]:datasets/PolyU-ChenLab/ETBench |
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``` |
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Then, enter the directory and extract the files in the `videos` folder by running: |
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``` |
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cd ETBench |
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for path in videos/*.tar.gz; do tar -xvf $path -C videos; done |
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``` |
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**[Optional]** You may also want to compress the videos (to lower FPS & resolution) for faster I/O. |
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``` |
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python compress_videos.py --fps 3 --size 224 |
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``` |
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<details> |
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<summary><i>Arguments of <code>compress_videos.py</code></i></summary> |
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- `--src_dir` Path to the videos folder (Default: `videos`) |
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- `--tgt_dir` Path to the output folder (Default: `videos_compressed`) |
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- `--fps` The target FPS for output (Default: `3`) |
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- `--size` The length of the shortest side of output frames (Default: `224`) |
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- `--workers` Number of workers to use (Default: `None` same as the number of CPUs) |
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</details> |
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This will compress all the videos to `3 FPS` and `224 pixels shortest side`. The audio will be removed as well. The output videos will be saved in `videos_compressed` folder with the same structure as `videos`. |
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## ๐ Getting Started |
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The folder for E.T. Bench is organized as follows. |
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``` |
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ETBench |
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โโ annotations |
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โ โโ txt (annotations for sub-tasks, with timestamps as text) |
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โ โโ vid (annotations for sub-tasks, with timestamps as <vid> tokens) |
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โ โโ etbench_txt_v1.0.json (merged annotations in `txt` folder) |
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โ โโ etbench_vid_v1.0.json (merged annotations in `vid` folder) |
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โโ evaluation |
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โ โโ compute_metrics.py (script for computing metrics) |
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โ โโ requirements.txt (requirements for the evaluation script) |
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โ โโ subset.json (IDs of the subset for evaluating commercial models) |
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โโ videos (raw video files) |
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โโ videos_compressed (compressed video files) |
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โโ compress_videos.py (script for compressing videos) |
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``` |
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For full evaluation on 7,289 samples, you just need to use either of the following annotation file. |
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- `etbench_txt_v1.0.json` - for models representing timestamps in pure text, e.g., '2.5 - 4.8 seconds' |
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- `etbench_vid_v1.0.json` - for models using special tokens for timestamps, e.g., \<vid\> token in E.T. Chat |
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Each JSON file contains a list of dicts with the following entries. |
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```python |
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{ |
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"version": 1.0, # annotation version |
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"idx": 0, # sample index |
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"task": "tvg", # task |
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"source": "qvhighlights", # source dataset |
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"video": "qvhighlights/example.mp4", # path to video |
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"duration": 35.0, # video duration (seconds) |
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"src": [1.2, 15.0], # [optional] timestamps (seconds) in model inputs |
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"tgt": [[15.0, 31.0], [31.4, 34.9]], # [optional] timestamps (seconds) in model outputs |
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"p": 0, # [optional] index of correct answer (for RAR, ECA, RVQ, GVQ) |
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"o": ["a", "b", "c", "d"], # [optional] answer candidates (for RAR, ECA, RVQ, GVQ) |
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"g": ["a cat...", "it then..."], # [optional] ground truth captions (for DVC, SLC) |
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"q": "...", # model input prompt |
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"a": "..." # [to be added by the user] model response |
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} |
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``` |
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For each sample, you can simply load the corresponding video and send it together with the prompt in `q` to the model. In `vid` style annotations, all the timestamps in `q` have been replaced with `<vid>` and their original values can be found in `src`. |
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After obtaining model outputs, you need to place raw text responses into the `a` entries of each sample and dump the entire list to a new JSON file. ***Please make sure the dumped file has exactly the same structure as the annotation file, except that each sample has a new `a` entry storing model outputs.*** |
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Please refer to the [inference script](../etchat/eval/infer_etbench.py) of E.T. Chat as an example. |
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## ๐ฎ Compute Metrics |
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Run the following command to install the requirements for the evaluation script. |
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``` |
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pip install -r evaluation/requirements.txt |
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``` |
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After that, compute the metrics by running |
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``` |
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python evaluation/compute_metrics.py <path-to-the-dumped-json> |
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# In case you want to evaluate on the subset with 470 samples (same as the commercial models in Table 1 of the paper) |
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# python evaluation/compute_metrics.py <path-to-the-dumped-json> --subset |
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``` |
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The evaluation log and computed metrics will be saved in `metrics.log` and `metrics.json`, respectively. |
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## ๐ Citation |
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Please kindly cite our paper if you find this project helpful. |
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``` |
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@inproceedings{liu2024etbench, |
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title={E.T. Bench: Towards Open-Ended Event-Level Video-Language Understanding}, |
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author={Liu, Ye and Ma, Zongyang and Qi, Zhongang and Wu, Yang and Chen, Chang Wen and Shan, Ying}, |
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booktitle={Neural Information Processing Systems (NeurIPS)}, |
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year={2024} |
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} |
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``` |
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