The recent Covid-19 pandemic and the fact that wearing masks in public is now mandatory in several countries, created challenges in the use of face recognition systems (FRS). In this work, we address the challenge of masked face recognition (MFR) and focus on evaluating the verification performance in FRS when verifying masked vs unmasked faces compared to verifying only unmasked faces. We propose a methodology that combines the traditional triplet loss and the mean squared error (MSE) intending to improve the robustness of an MFR system in the masked-unmasked comparison mode. The results obtained by our proposed method show improvements in a detailed step-wise ablation study. The conducted study showed significant performance gains induced by our proposed training paradigm and modified triplet loss on two evaluation databases.
翻译:近期的Covid-19大流行以及面部识别系统(FRS)的使用在几个国家是强制性的,这给面部识别系统(FRS)的使用带来了挑战。在这项工作中,我们应对面部识别(MFR)的挑战,并侧重于评估FRS在核查蒙面脸和无面部时的核查业绩,而不是只核查无面部。我们提出了一种方法,将传统的三重损失和平均正方形错误(MSE)结合起来,目的是在蒙面无面比较模式中提高MFR系统的稳健性。我们拟议方法的结果表明,在详细的渐进反动研究中取得了改进。进行的研究显示,我们拟议的培训模式带来了显著的业绩收益,并修改了两个评价数据库的三重损失。