DBLFace: Domain-Based Labels for NIR-VIS Heterogeneous Face Recognition

Ha A. Le, I. Kakadiaris
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引用次数: 4

Abstract

Deep learning-based domain-invariant feature learning methods are advancing in near-infrared and visible (NIR-VIS) heterogeneous face recognition. However, these methods are prone to overfitting due to the large intra-class variation and the lack of NIR images for training. In this paper, we introduce Domain-Based Label Face (DBLFace), a learning approach based on the assumption that a subject is not represented by a single label but by a set of labels. Each label represents images of a specific domain. In particular, a set of two labels per subject, one for the NIR images and one for the VIS images, are used for training a NIR-VIS face recognition model. The classification of images into different domains reduces the intra-class variation and lessens the negative impact of data imbalance in training. To train a network with sets of labels, we introduce a domain-based angular margin loss and a maximum angular loss to maintain the inter-class discrepancy and to enforce the close relationship of labels in a set. Quantitative experiments confirm that DBLFace significantly improves the rank-1 identification rate by 6.7% on the EDGE20 dataset and achieves state-of-the-art performance on the CASIA NIR-VIS 2.0 dataset.
基于域的NIR-VIS异构人脸识别方法
基于深度学习的域不变特征学习方法在近红外和可见光(NIR-VIS)异构人脸识别中取得了进展。然而,由于类内变化较大,缺乏近红外图像进行训练,这些方法容易出现过拟合。在本文中,我们引入了基于域的标签脸(DBLFace),这是一种基于假设主题不是由单个标签而是由一组标签表示的学习方法。每个标签代表一个特定域的图像。特别地,每个受试者一组两个标签,一个用于近红外图像,一个用于VIS图像,用于训练NIR-VIS人脸识别模型。将图像分类到不同的域,减少了类内的变化,减少了训练中数据不平衡的负面影响。为了训练具有标签集的网络,我们引入了基于域的角边缘损失和最大角损失来保持类间的差异,并加强标签集中标签的密切关系。定量实验证实,DBLFace在EDGE20数据集上显著提高了6.7%的rank-1识别率,在CASIA NIR-VIS 2.0数据集上达到了最先进的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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