LINK: Adaptive Modality Interaction for Audio-Visual Video Parsing
- URL: http://arxiv.org/abs/2412.20872v2
- Date: Tue, 31 Dec 2024 03:39:42 GMT
- Title: LINK: Adaptive Modality Interaction for Audio-Visual Video Parsing
- Authors: Langyu Wang, Bingke Zhu, Yingying Chen, Jinqiao Wang,
- Abstract summary: We introduce a Learning Interaction method for Non-aligned Knowledge (Link)
Link equilibrate the contributions of distinct modalities by dynamically adjusting their input during event prediction.
We leverage the semantic information of pseudo-labels as a priori knowledge to mitigate noise from other modalities.
- Score: 26.2873961811614
- License:
- Abstract: Audio-visual video parsing focuses on classifying videos through weak labels while identifying events as either visible, audible, or both, alongside their respective temporal boundaries. Many methods ignore that different modalities often lack alignment, thereby introducing extra noise during modal interaction. In this work, we introduce a Learning Interaction method for Non-aligned Knowledge (LINK), designed to equilibrate the contributions of distinct modalities by dynamically adjusting their input during event prediction. Additionally, we leverage the semantic information of pseudo-labels as a priori knowledge to mitigate noise from other modalities. Our experimental findings demonstrate that our model outperforms existing methods on the LLP dataset.
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