Gender and ethnicity classification using deep learning in heterogeneous face recognition

Neeru Narang, T. Bourlai
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引用次数: 36

Abstract

Although automated classification of soft biometric traits in terms of gender, ethnicity and age is a well-studied problem with a history of more than three decades, it is still far from being considered a solved problem for the case of difficult exposure conditions, such as during night-time, in environments with unconstrained lighting, or at large distances from the camera. In this paper, we investigate the advantages and limitations of the automated classification of soft biometric traits in terms of gender and ethnicity in Near-Infrared (NIR) long-range, night-time face images. The impact of soft biometric traits in terms of gender and ethnicity is explored for the purpose of improving cross-spectral face recognition (FR) performance. The main contributions are, (i) a dual database collected in NIR band at night time and at four different distances of 30, 60, 90 and 120 meters is used, (ii) a deep convolution neural network to perform the classification in terms of gender and ethnicity is proposed, (iii) a set of experiments is performed indicating that, the usage of soft biometric traits to perform face matching, resulted in a significantly improved rank-1 identification rate when compared to the original biometric system (scenario dependent).
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基于深度学习的异质人脸识别中的性别和种族分类
尽管根据性别、种族和年龄对软生物特征进行自动分类是一个有30多年历史的问题,但在困难的曝光条件下,如夜间、无约束光照环境或距离相机很远的情况下,它仍然远远没有被认为是一个解决的问题。本文研究了近红外(NIR)远程夜间人脸图像中基于性别和种族的软生物特征自动分类的优点和局限性。为了提高交叉光谱人脸识别(FR)的性能,探讨了性别和种族方面的软生物特征的影响。本文的主要贡献有:(i)利用夜间近红外波段在30、60、90和120米4个不同距离上采集的双数据库;(ii)提出了一种深度卷积神经网络进行性别和种族分类;(iii)进行了一组实验,表明使用软生物特征进行人脸匹配;与原始的生物识别系统(取决于场景)相比,显著提高了1级识别率。
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