The recent COVID-19 pandemic has increased the focus on hygienic and contactless identity verification methods. However, the pandemic led to the wide use of face masks, essential to keep the pandemic under control. The effect of wearing a mask on face recognition (FR) in a collaborative environment is a currently sensitive yet understudied issue. Recent reports have tackled this by evaluating the masked probe effect on the performance of automatic FR solutions. However, such solutions can fail in certain processes, leading to performing the verification task by a human expert. This work provides a joint evaluation and in-depth analyses of the face verification performance of human experts in comparison to state-of-the-art automatic FR solutions. This involves an extensive evaluation by human experts and 4 automatic recognition solutions. The study concludes with a set of take-home messages on different aspects of the correlation between the verification behavior of humans and machines.
翻译:最近的COVID-19大流行增加了对卫生和无接触身份核查方法的关注,然而,该流行病导致面罩的广泛使用,对控制这一流行病至关重要;在合作环境中戴面罩对面部识别的影响目前是一个敏感但研究不足的问题;最近的报告通过评价蒙面探查对自动FR解决方案的性能的影响来解决这个问题;然而,在某些过程中,这种解决办法可能会失败,导致由一位人类专家执行核查任务;这项工作与最先进的自动FR解决方案相比,对人类专家的面部核查表现进行了联合评价和深入分析;这涉及由人类专家进行广泛评价和4个自动识别解决方案;研究最后,就人类核查行为与机器之间相互关系的不同方面,提出了一套取自信息。