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Activation Template Matching Loss for Explainable Face Recognition

2022-07-05 17:16:04
Huawei Lin, Haozhe Liu, Qiufu Li, Linlin Shen

Abstract

Can we construct an explainable face recognition network able to learn a facial part-based feature like eyes, nose, mouth and so forth, without any manual annotation or additionalsion datasets? In this paper, we propose a generic Explainable Channel Loss (ECLoss) to construct an explainable face recognition network. The explainable network trained with ECLoss can easily learn the facial part-based representation on the target convolutional layer, where an individual channel can detect a certain face part. Our experiments on dozens of datasets show that ECLoss achieves superior explainability metrics, and at the same time improves the performance of face verification without face alignment. In addition, our visualization results also illustrate the effectiveness of the proposed ECLoss.

Abstract (translated)

URL

https://arxiv.org/abs/2207.02179

PDF

https://arxiv.org/pdf/2207.02179.pdf


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