Due to the COVID-19 situation, face masks have become a main part of our daily life. Wearing mouth-and-nose protection has been made a mandate in many public places, to prevent the spread of the COVID-19 virus. However, face masks affect the performance of face recognition, since a large area of the face is covered. The effect of wearing a face mask on the different components of the face recognition system in a collaborative environment is a problem that is still to be fully studied. This work studies, for the first time, the effect of wearing a face mask on face image quality by utilising state-of-the-art face image quality assessment methods of different natures. This aims at providing better understanding on the effect of face masks on the operation of face recognition as a whole system. In addition, we further studied the effect of simulated masks on face image utility in comparison to real face masks. We discuss the correlation between the mask effect on face image quality and that on the face verification performance by automatic systems and human experts, indicating a consistent trend between both factors. The evaluation is conducted on the database containing (1) no-masked faces, (2) real face masks, and (3) simulated face masks, by synthetically generating digital facial masks on no-masked faces according to the NIST protocols [1, 23]. Finally, a visual interpretation of the face areas contributing to the quality score of a selected set of quality assessment methods is provided to give a deeper insight into the difference of network decisions in masked and non-masked faces, among other variations.
翻译:由于COVID-19的情况,面罩已成为我们日常生活的一个主要部分;在许多公共场所,口服和鼻罩保护已成为一项任务,以防止COVID-19病毒的传播;然而,面罩影响面部识别的表现,因为面部识别覆盖面部的面积很大;在协作环境中面部识别系统的不同组成部分上戴面罩的影响是一个有待充分研究的问题;这项工作研究首次通过使用最新面部质量评估方法,将面部面部面部面部面部面部面部面部面部面部面部面部面部面部面部面部面部面部面部面部保护面部面部面部面部面部面部保护面部保护面部保护对面部质量的影响;在数据库中,对面部面部面部面部的面部质量评估,对面部面部面部质量评估的不面部质量评估,对面部脸部识别面部识别面部识别面部面部识别面部识别面部的面部面部面部识别面部,最后对面部面部面部面部进行模拟分析。