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[arXiv]
[bibtex]@InProceedings{Zhao_2024_CVPR, author = {Zhao, Yue and Zhao, Long and Zhou, Xingyi and Wu, Jialin and Chu, Chun-Te and Miao, Hui and Schroff, Florian and Adam, Hartwig and Liu, Ting and Gong, Boqing and Krahenbuhl, Philipp and Yuan, Liangzhe}, title = {Distilling Vision-Language Models on Millions of Videos}, booktitle = {Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR)}, month = {June}, year = {2024}, pages = {13106-13116} }
Distilling Vision-Language Models on Millions of Videos
Abstract
The recent advance in vision-language models is largely attributed to the abundance of image-text data. We aim to replicate this success for video-language models but there simply is not enough human-curated video-text data available. We thus resort to fine-tuning a video-language model from a strong image-language baseline with synthesized instructional data. The resulting video model by video-instruction-tuning (VIIT) is then used to auto-label millions of videos to generate high-quality captions. We show the adapted video-language model performs well on a wide range of video-language benchmarks. For instance it surpasses the best prior result on open-ended NExT-QA by2.8%. Besides our model generates detailed descriptions for previously unseen videos which provide better textual supervision than existing methods. Experiments show that a video-language dual-encoder model contrastively trained on these auto-generated captions is 3.8% better than the strongest baseline that also leverages vision-language models. Our best model outperforms state-of-the-art methods on MSR-VTT zero-shot text-to-video retrieval by 6%. As a side product we generate the largest video caption dataset to date.
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