DI-VTR: Dual inter-modal interaction model for video-text retrieval

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Abstract

Video-text retrieval is a challenging task for multimodal information processing due to the semantic gap between different modalities. However, most existing methods do not fully mine the intra-modal interactions, as with the temporal correlation of video frames, which results in poor matching performance. Additionally, the imbalanced semantic information between videos and texts also leads to difficulty in the alignment of the two modalities. To this end, we propose a dual inter-modal interaction network for video-text retrieval, i.e., DI-VTR. To learn the intra-modal interaction of video frames, we design a contextual-related video encoder to obtain more fine-grained content-oriented video representations. We also propose a dual inter-modal interaction module to accomplish accurate multilingual alignment between the video and text modalities by introducing multilingual text to improve the representation ability of text semantic features. Extensive experimental results on commonly-used video-text retrieval datasets, including MSR-VTT, MSVD and VATEX, show that the proposed method achieves significantly improved performance compared with state-of-the-art methods.

DI-VTR:用于视频文本检索的双模态交互模型
由于不同模态之间存在语义差距,视频-文本检索是多模态信息处理中一项具有挑战性的任务。然而,现有的大多数方法并不能充分挖掘模态内的交互作用,如视频帧的时间相关性,从而导致匹配效果不佳。此外,视频和文本之间语义信息的不平衡也会导致两种模态难以对齐。为此,我们提出了一种用于视频-文本检索的双模态交互网络,即 DI-VTR。为了学习视频帧的模内交互,我们设计了一种与上下文相关的视频编码器,以获得更精细的面向内容的视频表示。我们还提出了双模态间交互模块,通过引入多语言文本来提高文本语义特征的表征能力,从而实现视频模态和文本模态之间的多语言精确对齐。在常用的视频-文本检索数据集(包括 MSR-VTT、MSVD 和 VATEX)上进行的大量实验结果表明,与最先进的方法相比,所提出的方法显著提高了性能。
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