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Main Authors: Li, Xiang, Wang, Jinglu, Xu, Xiaohao, Peng, Xiulian, Singh, Rita, Lu, Yan, Raj, Bhiksha
Format: Preprint
Published: 2023
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Online Access:https://arxiv.org/abs/2310.00132
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author Li, Xiang
Wang, Jinglu
Xu, Xiaohao
Peng, Xiulian
Singh, Rita
Lu, Yan
Raj, Bhiksha
author_facet Li, Xiang
Wang, Jinglu
Xu, Xiaohao
Peng, Xiulian
Singh, Rita
Lu, Yan
Raj, Bhiksha
contents Audiovisual segmentation (AVS) is a challenging task that aims to segment visual objects in videos according to their associated acoustic cues. With multiple sound sources and background disturbances involved, establishing robust correspondences between audio and visual contents poses unique challenges due to (1) complex entanglement across sound sources and (2) frequent changes in the occurrence of distinct sound events. Assuming sound events occur independently, the multi-source semantic space can be represented as the Cartesian product of single-source sub-spaces. We are motivated to decompose the multi-source audio semantics into single-source semantics for more effective interactions with visual content. We propose a semantic decomposition method based on product quantization, where the multi-source semantics can be decomposed and represented by several disentangled and noise-suppressed single-source semantics. Furthermore, we introduce a global-to-local quantization mechanism, which distills knowledge from stable global (clip-level) features into local (frame-level) ones, to handle frequent changes in audio semantics. Extensive experiments demonstrate that our semantically decomposed audio representation significantly improves AVS performance, e.g., +21.2% mIoU on the challenging AVS-Semantic benchmark with ResNet50 backbone. https://github.com/lxa9867/QSD.
format Preprint
id arxiv_https___arxiv_org_abs_2310_00132
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle QDFormer: Towards Robust Audiovisual Segmentation in Complex Environments with Quantization-based Semantic Decomposition
Li, Xiang
Wang, Jinglu
Xu, Xiaohao
Peng, Xiulian
Singh, Rita
Lu, Yan
Raj, Bhiksha
Computer Vision and Pattern Recognition
Audiovisual segmentation (AVS) is a challenging task that aims to segment visual objects in videos according to their associated acoustic cues. With multiple sound sources and background disturbances involved, establishing robust correspondences between audio and visual contents poses unique challenges due to (1) complex entanglement across sound sources and (2) frequent changes in the occurrence of distinct sound events. Assuming sound events occur independently, the multi-source semantic space can be represented as the Cartesian product of single-source sub-spaces. We are motivated to decompose the multi-source audio semantics into single-source semantics for more effective interactions with visual content. We propose a semantic decomposition method based on product quantization, where the multi-source semantics can be decomposed and represented by several disentangled and noise-suppressed single-source semantics. Furthermore, we introduce a global-to-local quantization mechanism, which distills knowledge from stable global (clip-level) features into local (frame-level) ones, to handle frequent changes in audio semantics. Extensive experiments demonstrate that our semantically decomposed audio representation significantly improves AVS performance, e.g., +21.2% mIoU on the challenging AVS-Semantic benchmark with ResNet50 backbone. https://github.com/lxa9867/QSD.
title QDFormer: Towards Robust Audiovisual Segmentation in Complex Environments with Quantization-based Semantic Decomposition
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2310.00132