MH-DETR: Video Moment and Highlight Detection with Cross-modal Transformer

摘要

With the increasing demand for video understanding, video moment and highlight detection (MHD) has emerged as a critical research topic. MHD aims to localize all moments and predict clip-wise saliency scores simultaneously. Despite progress made by existing DETR-based methods, we observe that these methods coarsely fuse features from different modalities, which weakens the temporal intra-modal context and results in insufficient cross-modal interaction. To address this issue, we propose MH-DETR (Moment and Highlight DEtection TRansformer) tailored for MHD. Specifically, we introduce a simple yet efficient pooling operator within the uni-modal encoder to capture global intra-modal context. Moreover, to obtain temporally aligned cross-modal features, we design a plug-and-play cross-modal interaction module between the encoder and decoder, seamlessly integrating visual and textual features. Comprehensive experiments on QVHighlights, Charades-STA, Activity-Net, and TVSum datasets show that MH-DETR outperforms existing state-of-the-art methods, demonstrating its effectiveness and superiority. Our code is available at https://github.com/YoucanBaby/MH-DETR.

出版物
In 2024 International Joint Conference on Neural Networks (IJCNN)
Yifang Xu(徐一舫)
硕士(2020-2023)

简略介绍

Benxiang Zhai(翟本祥)
Benxiang Zhai(翟本祥)
硕士(2023-)

简略介绍

Sidan Du(都思丹)
Sidan Du(都思丹)
教授

简略介绍