计算机科学
人工智能
视频检索
自然语言处理
语音识别
培训(气象学)
情报检索
多媒体
气象学
物理
作者
Fangxun Shu,Biaolong Chen,Yue Liao,Jinqiao Wang,Si Liu
标识
DOI:10.1109/tmm.2024.3402613
摘要
We present a simple yet effective end-to-end Video-language Pre-training (VidLP) framework, Masked Contrastive Video-language Pre-training (MAC), for video-text retrieval tasks. Our MAC aims to reduce video representation's spatial and temporal redundancy in the VidLP model by a mask sampling mechanism to improve pre-training efficiency. Comparing conventional temporal sparse sampling, we propose to randomly mask a high ratio of spatial regions and only take visible regions into the encoder as sparse spatial sampling. Similarly, we adopt the mask sampling technique for text inputs for consistency. Instead of blindly applying the mask-then-prediction paradigm from MAE, we propose a masked-then-alignment paradigm for efficient video-text alignment. The motivation is that video-text retrieval tasks rely on high-level alignment rather than low-level reconstruction, and multimodal alignment with masked modeling encourages the model to learn a robust and general multimodal representation from incomplete and unstable inputs. Coupling these designs enables efficient end-to-end pre-training: 3× speed up, 60%+ computation reduction, and 4%+ performance improvement. Our MAC achieves state-of-the-art results on various video-text retrieval datasets including MSR-VTT, DiDeMo, and ActivityNet. Our approach is omnivorous to input modalities. With minimal modifications, we achieve competitive results on image-text retrieval tasks.
科研通智能强力驱动
Strongly Powered by AbleSci AI