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Sihan Chen Xingjian He Handong Li Xiaojie Jin Jiashi Feng Jing Liu

Abstract
Due to the limited scale and quality of video-text training corpus, most vision-language foundation models employ image-text datasets for pretraining and primarily focus on modeling visually semantic representations while disregarding temporal semantic representations and correlations. To address this issue, we propose COSA, a COncatenated SAmple pretrained vision-language foundation model. COSA jointly models visual contents and event-level temporal cues using only image-text corpora. We achieve this by sequentially concatenating multiple image-text pairs as inputs for pretraining. This transformation effectively converts existing image-text corpora into a pseudo long-form video-paragraph corpus, enabling richer scene transformations and explicit event-description correspondence. Extensive experiments demonstrate that COSA consistently improves performance across a broad range of downstream tasks, including long-form/short-form video-text tasks and image-text tasks such as retrieval, captioning, and question answering. Notably, COSA achieves state-of-the-art results on various competitive benchmarks. Code and model are released at https://github.com/TXH-mercury/COSA.
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| video-captioning-on-msr-vtt-1 | COSA | BLEU-4: 53.7 CIDEr: 74.7 |
| video-captioning-on-msvd-1 | COSA | BLEU-4: 76.5 CIDEr: 178.5 |
| video-captioning-on-tvc | COSA | BLEU-4: 18.8 CIDEr: 70.7 |
| video-captioning-on-vatex-1 | COSA | BLEU-4: 43.7 CIDEr: 96.5 |
| video-captioning-on-youcook2 | COSA | BLEU-4: 10.1 CIDEr: 1.31 |
| video-question-answering-on-activitynet-qa | COSA | Accuracy: 49.9 |
| video-question-answering-on-msrvtt-qa | COSA | Accuracy: 49.2 |
| video-retrieval-on-activitynet | COSA | text-to-video R@1: 67.3 |
| video-retrieval-on-didemo | COSA | text-to-video R@1: 70.5 |
| video-retrieval-on-lsmdc | COSA | text-to-video R@1: 39.4 |
| video-retrieval-on-msr-vtt | COSA | text-to-video R@1: 57.9 |
| visual-question-answering-on-msvd-qa-1 | COSA | Accuracy: 0.60 |
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