Cross-spectral face recognition (CFR) refers to recognizing individuals using face images stemming from different spectral bands, such as infrared vs. visible. While CFR is inherently more challenging than classical face recognition due to significant variation in facial appearance caused by the modality gap, it is useful in many scenarios including night-vision biometrics and detecting presentation attacks. Recent advances in convolutional neural networks (CNNs) have resulted in significant improvement in the performance of CFR systems. Given these developments, the contributions of this survey are three-fold. First, we provide an overview of CFR, by formalizing the CFR problem and presenting related applications. Secondly, we discuss the appropriate spectral bands for face recognition and discuss recent CFR methods, placing emphasis on deep neural networks. In particular we describe techniques that have been proposed to extract and compare heterogeneous features emerging from different spectral bands. We also discuss the datasets that have been used for evaluating CFR methods. Finally, we discuss the challenges and future lines of research on this topic.
翻译:跨光谱面部识别(CFR)是指识别使用来自不同光谱带的面部图像的个人,如红外线对可见的光谱带。由于模式差距导致面部外观差异很大,CFR在本质上比古典面部识别更具挑战性,但在许多情景中,包括夜视生物鉴别学和探测演示攻击,这种识别是有用的。进化神经网络(CNNs)的最近进步使CFR系统的性能有了显著改善。鉴于这些发展,这次调查的贡献有三重。首先,我们通过正式确定CFR问题和提出相关应用,对CFR作了概述。第二,我们讨论面部脸部识别的适当光谱带,并讨论最近的CFR方法,强调深神经网络。我们特别描述了为提取和比较不同光谱带产生的不同特征而提出的技术。我们还讨论了用于评价CFR方法的数据集。最后,我们讨论了这一专题的挑战和未来的研究路线。