Artificial intelligence-based masked face detection: A survey

Khalid M. Hosny, Nada AbdElFattah Ibrahim, Ehab R. Mohamed, Hanaa M. Hamza
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Abstract

The COVID-19 virus is causing a global pandemic. The total number of new coronavirus cases worldwide by the end of November 2020 had already surpassed 60 million. The World Health Organization (WHO) has determined that wearing masks is a crucial precaution during the COVID-19 epidemic to limit the growth of viruses, and facemasks are frequently seen in public places worldwide. Also, many public service providers wear face masks (covering their mouths and noses). These events brought attention to the need for automatic computer-vision-based object detection (masked face detection) methods to track public behavior. Therefore, it is necessary to develop tools for monitor people who have not used masks in public service areas in real-time. Reducing the spread of infectious diseases can occur when masked face detection techniques are used for authentication instead of mask removal for face matching. A superior framework of masked face detection could improve security systems and lower the rate of crime. Masked face detection is a computer vision method standard in people's daily lives to recognize, discover, and recognize masked faces in pictures and videos. This study provides a thorough and systematic analysis of masked face detection algorithms. With the help of examples, we have thoroughly examined and reviewed the studies done concerning face mask identification and techniques for masked face detection.

Additionally, we compared and explained different masked face detection dataset types, libraries, and techniques. We also discussed the challenges with masked face detection and whether the researchers could overcome them. We have discussed and conducted a thorough evaluation of the accuracy, pros, and cons of various approaches by comparing their performance on multiple datasets. As a result, this study aims to give the researcher a broader viewpoint to aid him in finding patterns and trends in masked face detection in various COVID-19 contexts, overcoming challenges that are still present, and creating future algorithms for masked face detection that are more reliable and accurate.

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基于人工智能的蒙面人脸检测:调查
COVID-19 病毒正在引发全球大流行。截至 2020 年 11 月底,全球新增冠状病毒病例总数已超过 6 000 万例。世界卫生组织(WHO)认为,在 COVID-19 流行期间,佩戴口罩是限制病毒滋生的重要预防措施,因此在世界各地的公共场所经常可以看到口罩的身影。此外,许多公共服务人员也佩戴口罩(遮住口鼻)。这些事件使人们注意到需要基于计算机视觉的物体自动检测(蒙面检测)方法来跟踪公众行为。因此,有必要开发工具,实时监控公共服务区域内未使用口罩的人员。使用蒙面人脸检测技术进行身份验证,而不是去除面具进行人脸匹配,可以减少传染病的传播。出色的面具人脸检测框架可以改善安全系统,降低犯罪率。蒙面人脸检测是人们日常生活中标准的计算机视觉方法,用于识别、发现和辨认图片和视频中的蒙面人脸。本研究对蒙面人脸检测算法进行了全面系统的分析。此外,我们还比较并解释了不同的蒙面检测数据集类型、库和技术。我们还讨论了蒙面人脸检测所面临的挑战以及研究人员能否克服这些挑战。通过比较各种方法在多个数据集上的表现,我们讨论并全面评估了这些方法的准确性、优点和缺点。因此,本研究旨在为研究人员提供一个更广阔的视角,帮助他们找到在 COVID-19 的各种情况下进行蒙面人脸检测的模式和趋势,克服仍然存在的挑战,并创建更可靠、更准确的未来蒙面人脸检测算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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