A Quality Aware Sample-to-Sample Comparison for Face Recognition

Mohammad Saeed Ebrahimi Saadabadi, Sahar Rahimi Malakshan, A. Zafari, Moktari Mostofa, N. Nasrabadi
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引用次数: 9

Abstract

Currently available face datasets mainly consist of a large number of high-quality and a small number of low-quality samples. As a result, a Face Recognition (FR) network fails to learn the distribution of low-quality samples since they are less frequent during training (underrepresented). Moreover, current state-of-the-art FR training paradigms are based on the sample-to-center comparison (i.e., Softmax-based classifier), which results in a lack of uniformity between train and test metrics. This work integrates a quality-aware learning process at the sample level into the classification training paradigm (QAFace). In this regard, Softmax centers are adaptively guided to pay more attention to low-quality samples by using a quality-aware function. Accordingly, QAFace adds a quality-based adjustment to the updating procedure of the Softmax-based classifier to improve the performance on the underrepresented low-quality samples. Our method adaptively finds and assigns more attention to the recognizable low-quality samples in the training datasets. In addition, QAFace ignores the unrecognizable low-quality samples using the feature magnitude as a proxy for quality. As a result, QAFace prevents class centers from getting distracted from the optimal direction. The proposed method is superior to the state-of-the-art algorithms in extensive experimental results on the CFP-FP, LFW, CPLFW, CALFW, AgeDB, IJB-B, and IJB-C datasets.
基于质量意识的人脸识别样本间比较
目前可用的人脸数据集主要由大量高质量样本和少量低质量样本组成。因此,人脸识别(FR)网络无法学习低质量样本的分布,因为它们在训练期间频率较低(代表性不足)。此外,目前最先进的FR训练范例是基于样本到中心的比较(即基于softmax的分类器),这导致训练和测试指标之间缺乏一致性。这项工作将样本级别的质量意识学习过程集成到分类训练范式(qface)中。因此,Softmax中心通过使用质量意识功能,自适应地引导中心更加关注低质量的样品。因此,qface在基于softmax的分类器的更新过程中增加了基于质量的调整,以提高在未充分代表的低质量样本上的性能。我们的方法自适应地发现训练数据集中可识别的低质量样本并给予更多的关注。此外,qface使用特征大小作为质量的代理来忽略不可识别的低质量样本。因此,qface可以防止课堂中心偏离最佳方向。在CFP-FP、LFW、CPLFW、CALFW、AgeDB、IJB-B和IJB-C数据集上的大量实验结果表明,该方法优于目前最先进的算法。
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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