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Main Authors: Wang, Chengpeng, Chen, Li, Wang, Lili, Li, Zhaofan, Lv, Xuebin
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2411.01988
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author Wang, Chengpeng
Chen, Li
Wang, Lili
Li, Zhaofan
Lv, Xuebin
author_facet Wang, Chengpeng
Chen, Li
Wang, Lili
Li, Zhaofan
Lv, Xuebin
contents Facial expression recognition faces challenges where labeled significant features in datasets are mixed with unlabeled redundant ones. In this paper, we introduce Cross Similarity Attention (CSA) to mine richer intrinsic information from image pairs, overcoming a limitation when the Scaled Dot-Product Attention of ViT is directly applied to calculate the similarity between two different images. Based on CSA, we simultaneously minimize intra-class differences and maximize inter-class differences at the fine-grained feature level through interactions among multiple branches. Contrastive residual distillation is utilized to transfer the information learned in the cross module back to the base network. We ingeniously design a four-branch centrally symmetric network, named Quadruplet Cross Similarity (QCS), which alleviates gradient conflicts arising from the cross module and achieves balanced and stable training. It can adaptively extract discriminative features while isolating redundant ones. The cross-attention modules exist during training, and only one base branch is retained during inference, resulting in no increase in inference time. Extensive experiments show that our proposed method achieves state-of-the-art performance on several FER datasets.
format Preprint
id arxiv_https___arxiv_org_abs_2411_01988
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle QCS: Feature Refining from Quadruplet Cross Similarity for Facial Expression Recognition
Wang, Chengpeng
Chen, Li
Wang, Lili
Li, Zhaofan
Lv, Xuebin
Computer Vision and Pattern Recognition
Facial expression recognition faces challenges where labeled significant features in datasets are mixed with unlabeled redundant ones. In this paper, we introduce Cross Similarity Attention (CSA) to mine richer intrinsic information from image pairs, overcoming a limitation when the Scaled Dot-Product Attention of ViT is directly applied to calculate the similarity between two different images. Based on CSA, we simultaneously minimize intra-class differences and maximize inter-class differences at the fine-grained feature level through interactions among multiple branches. Contrastive residual distillation is utilized to transfer the information learned in the cross module back to the base network. We ingeniously design a four-branch centrally symmetric network, named Quadruplet Cross Similarity (QCS), which alleviates gradient conflicts arising from the cross module and achieves balanced and stable training. It can adaptively extract discriminative features while isolating redundant ones. The cross-attention modules exist during training, and only one base branch is retained during inference, resulting in no increase in inference time. Extensive experiments show that our proposed method achieves state-of-the-art performance on several FER datasets.
title QCS: Feature Refining from Quadruplet Cross Similarity for Facial Expression Recognition
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2411.01988