cs.AI updates on arXiv.org 09月25日
ExpFace:新型角度边界损失函数提升人脸识别
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本文提出一种新的角度边界损失函数ExpFace,用于提高人脸识别性能。ExpFace针对噪声样本对边缘损失的影响进行优化,通过引入角度指数项作为边界,在中心区域应用更大惩罚,抑制噪声样本,并在实验中达到最先进的性能。

arXiv:2509.19753v1 Announce Type: cross Abstract: Face recognition is an open-set problem requiring high discriminative power to ensure that intra-class distances remain smaller than inter-class distances. Margin-based softmax losses, such as SphereFace, CosFace, and ArcFace, have been widely adopted to enhance intra-class compactness and inter-class separability, yet they overlook the impact of noisy samples. By examining the distribution of samples in the angular space, we observe that clean samples predominantly cluster in the center region, whereas noisy samples tend to shift toward the peripheral region. Motivated by this observation, we propose the Exponential Angular Margin Loss (ExpFace), which introduces an angular exponential term as the margin. This design applies a larger penalty in the center region and a smaller penalty in the peripheral region within the angular space, thereby emphasizing clean samples while suppressing noisy samples. We present a unified analysis of ExpFace and classical margin-based softmax losses in terms of margin embedding forms, similarity curves, and gradient curves, showing that ExpFace not only avoids the training instability of SphereFace and the non-monotonicity of ArcFace, but also exhibits a similarity curve that applies penalties in the same manner as the decision boundary in the angular space. Extensive experiments demonstrate that ExpFace achieves state-of-the-art performance. To facilitate future research, we have released the source code at: https://github.com/dfr-code/ExpFace.

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人脸识别 角度边界损失 ExpFace 噪声抑制 性能提升
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