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Main Authors: Zha, Mingfeng, Li, Tianyu, Wang, Guoqing, Wang, Peng, Wu, Yangyang, Yang, Yang, Shen, Heng Tao
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2507.20740
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author Zha, Mingfeng
Li, Tianyu
Wang, Guoqing
Wang, Peng
Wu, Yangyang
Yang, Yang
Shen, Heng Tao
author_facet Zha, Mingfeng
Li, Tianyu
Wang, Guoqing
Wang, Peng
Wu, Yangyang
Yang, Yang
Shen, Heng Tao
contents Audio-visual segmentation (AVS) aims to segment objects in videos based on audio cues. Existing AVS methods are primarily designed to enhance interaction efficiency but pay limited attention to modality representation discrepancies and imbalances. To overcome this, we propose the implicit counterfactual framework (ICF) to achieve unbiased cross-modal understanding. Due to the lack of semantics, heterogeneous representations may lead to erroneous matches, especially in complex scenes with ambiguous visual content or interference from multiple audio sources. We introduce the multi-granularity implicit text (MIT) involving video-, segment- and frame-level as the bridge to establish the modality-shared space, reducing modality gaps and providing prior guidance. Visual content carries more information and typically dominates, thereby marginalizing audio features in the decision-making. To mitigate knowledge preference, we propose the semantic counterfactual (SC) to learn orthogonal representations in the latent space, generating diverse counterfactual samples, thus avoiding biases introduced by complex functional designs and explicit modifications of text structures or attributes. We further formulate the collaborative distribution-aware contrastive learning (CDCL), incorporating factual-counterfactual and inter-modality contrasts to align representations, promoting cohesion and decoupling. Extensive experiments on three public datasets validate that the proposed method achieves state-of-the-art performance.
format Preprint
id arxiv_https___arxiv_org_abs_2507_20740
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Implicit Counterfactual Learning for Audio-Visual Segmentation
Zha, Mingfeng
Li, Tianyu
Wang, Guoqing
Wang, Peng
Wu, Yangyang
Yang, Yang
Shen, Heng Tao
Computer Vision and Pattern Recognition
Audio-visual segmentation (AVS) aims to segment objects in videos based on audio cues. Existing AVS methods are primarily designed to enhance interaction efficiency but pay limited attention to modality representation discrepancies and imbalances. To overcome this, we propose the implicit counterfactual framework (ICF) to achieve unbiased cross-modal understanding. Due to the lack of semantics, heterogeneous representations may lead to erroneous matches, especially in complex scenes with ambiguous visual content or interference from multiple audio sources. We introduce the multi-granularity implicit text (MIT) involving video-, segment- and frame-level as the bridge to establish the modality-shared space, reducing modality gaps and providing prior guidance. Visual content carries more information and typically dominates, thereby marginalizing audio features in the decision-making. To mitigate knowledge preference, we propose the semantic counterfactual (SC) to learn orthogonal representations in the latent space, generating diverse counterfactual samples, thus avoiding biases introduced by complex functional designs and explicit modifications of text structures or attributes. We further formulate the collaborative distribution-aware contrastive learning (CDCL), incorporating factual-counterfactual and inter-modality contrasts to align representations, promoting cohesion and decoupling. Extensive experiments on three public datasets validate that the proposed method achieves state-of-the-art performance.
title Implicit Counterfactual Learning for Audio-Visual Segmentation
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2507.20740