VideoGLUE: Video General Understanding Evaluation of Foundation Models
Abstract
We evaluate the video understanding capabilities of existing foundation models (FMs) using a carefully designed experiment protocol consisting of three hallmark tasks (action recognition,temporal localization, and spatiotemporal localization), eight datasets well received by the community, and four adaptation methods tailoring an FM for downstream tasks. Furthermore,we jointly profile FMs’ efficacy and efficiency when adapting to general video understanding tasks using cost measurements during both training and inference. Our main findings areas follows. First, task-specialized models significantly outperform the seven FMs studied in this work, in sharp contrast to what FMs have achieved in natural language and image understanding. Second, video-native FMs, whose pretraining data mainly contains the video modality, are generally better than image-native FMs in classifying motion-rich videos,localizing actions in time, and understanding a video of more than one action. Third, the video-native FMs can perform well on video tasks under light adaptations to downstream tasks (e.g., freezing the FM backbones), while image-native FMs win in full end-to-end finetuning. The first two observations reveal the need and tremendous opportunities to conduct research on video-focused FMs, and the last confirms that both tasks and adaptation methods matter when it comes to the evaluation of FMs. Our code is released under: https://github.com/tensorflow/models/tree/master/official/projects/videoglue
Cite
Text
Yuan et al. "VideoGLUE: Video General Understanding Evaluation of Foundation Models." Transactions on Machine Learning Research, 2024.Markdown
[Yuan et al. "VideoGLUE: Video General Understanding Evaluation of Foundation Models." Transactions on Machine Learning Research, 2024.](https://mlanthology.org/tmlr/2024/yuan2024tmlr-videoglue/)BibTeX
@article{yuan2024tmlr-videoglue,
title = {{VideoGLUE: Video General Understanding Evaluation of Foundation Models}},
author = {Yuan, Liangzhe and Gundavarapu, Nitesh Bharadwaj and Zhao, Long and Zhou, Hao and Cui, Yin and Jiang, Lu and Yang, Xuan and Jia, Menglin and Weyand, Tobias and Friedman, Luke and Sirotenko, Mikhail and Wang, Huisheng and Schroff, Florian and Adam, Hartwig and Yang, Ming-Hsuan and Liu, Ting and Gong, Boqing},
journal = {Transactions on Machine Learning Research},
year = {2024},
url = {https://mlanthology.org/tmlr/2024/yuan2024tmlr-videoglue/}
}