The emergence of COVID-19 has had a global and profound impact, not only on society as a whole, but also on the lives of individuals. Various prevention measures were introduced around the world to limit the transmission of the disease, including face masks, mandates for social distancing and regular disinfection in public spaces, and the use of screening applications. These developments also triggered the need for novel and improved computer vision techniques capable of (i) providing support to the prevention measures through an automated analysis of visual data, on the one hand, and (ii) facilitating normal operation of existing vision-based services, such as biometric authentication schemes, on the other. Especially important here, are computer vision techniques that focus on the analysis of people and faces in visual data and have been affected the most by the partial occlusions introduced by the mandates for facial masks. Such computer vision based human analysis techniques include face and face-mask detection approaches, face recognition techniques, crowd counting solutions, age and expression estimation procedures, models for detecting face-hand interactions and many others, and have seen considerable attention over recent years. The goal of this survey is to provide an introduction to the problems induced by COVID-19 into such research and to present a comprehensive review of the work done in the computer vision based human analysis field. Particular attention is paid to the impact of facial masks on the performance of various methods and recent solutions to mitigate this problem. Additionally, a detailed review of existing datasets useful for the development and evaluation of methods for COVID-19 related applications is also provided. Finally, to help advance the field further, a discussion on the main open challenges and future research direction is given.
翻译:COVID-19的出现不仅对整个社会,而且对个人生活产生了深刻的全球性影响,不仅对整个社会产生了深刻的影响,而且对个人生活也产生了深刻的影响,在世界各地采取了各种预防措施,以限制疾病的传播,包括面罩、在公共场所进行社会分解和定期消毒的任务以及使用筛查应用程序,这些事态发展还引发了对新型和改良计算机视觉技术的需要,这些技术能够:(一) 一方面通过对视觉数据进行自动化分析,为预防措施提供支持,一方面通过对视觉数据进行公开分析,以及(二) 促进现有视觉服务(如生物生物鉴别认证计划)的正常运作,另一方面,也促进了生物鉴别认证计划等现有视觉服务。在这方面尤为重要的是,计算机预视技术侧重于对人和面部面部面部面部面部的分析,这些基于计算机的视觉技术包括面部和脸部检测方法、面部识别技术、人群计算、年龄和表达估计程序、发现面部互动的有用模式等。