NIR-VIS和VIS-VIS人脸识别的联合特征分布对齐学习

T. Miyamoto, H. Hashimoto, Akihiro Hayasaka, Akinori F. Ebihara, Hitoshi Imaoka
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引用次数: 3

摘要

由于深度学习的发展,可见光(VIS)图像的人脸识别达到了很高的精度。然而,由于领域差异和缺乏大型的异构人脸识别数据集,异构人脸识别(HFR)仍然是一项艰巨的任务。有几种方法试图通过微调来减少域差异,这导致VIS域的性能显著下降,因为它失去了高度区分的VIS表示。为了克服这个问题,我们提出了一种利用知识蒸馏的联合学习方法——联合特征分布对齐学习(JFDAL)。它使我们能够在保留VIS域原有性能的情况下实现高HFR性能。大量的实验表明,我们提出的方法在公共HFR数据集Oulu-CASIA NIR&VIS和VIS领域流行的验证数据集FLW, CFP, AgeDB上的性能比传统的微调方法有统计学上的显著提高。此外,与现有最先进的HFR方法的对比实验表明,我们的方法在Oulu-CASIA NIR&VIS数据集上取得了相当的HFR性能,并且VIS性能下降较小。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Joint Feature Distribution Alignment Learning for NIR-VIS and VIS-VIS Face Recognition
Face recognition for visible light (VIS) images achieve high accuracy thanks to the recent development of deep learning. However, heterogeneous face recognition (HFR), which is a face matching in different domains, is still a difficult task due to the domain discrepancy and lack of large HFR dataset. Several methods have attempted to reduce the domain discrepancy by means of fine-tuning, which causes significant degradation of the performance in the VIS domain because it loses the highly discriminative VIS representation. To overcome this problem, we propose joint feature distribution alignment learning (JFDAL) which is a joint learning approach utilizing knowledge distillation. It enables us to achieve high HFR performance with retaining the original performance for the VIS domain. Extensive experiments demonstrate that our proposed method delivers statistically significantly better performances compared with the conventional fine-tuning approach on a public HFR dataset Oulu-CASIA NIR&VIS and popular verification datasets in VIS domain such as FLW, CFP, AgeDB. Furthermore, comparative experiments with existing state-of-the-art HFR methods show that our method achieves a comparable HFR performance on the Oulu-CASIA NIR&VIS dataset with less degradation of VIS performance.
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