Coronavirus disease 2019 (COVID-19) continues to pose a great challenge to the world since its outbreak. To fight against the disease, a series of artificial intelligence (AI) techniques are developed and applied to real-world scenarios such as safety monitoring, disease diagnosis, infection risk assessment, lesion segmentation of COVID-19 CT scans,etc. The coronavirus epidemics have forced people wear masks to counteract the transmission of virus, which also brings difficulties to monitor large groups of people wearing masks. In this paper, we primarily focus on the AI techniques of masked facial detection and related datasets. We survey the recent advances, beginning with the descriptions of masked facial detection datasets. Thirteen available datasets are described and discussed in details. Then, the methods are roughly categorized into two classes: conventional methods and neural network-based methods. Conventional methods are usually trained by boosting algorithms with hand-crafted features, which accounts for a small proportion. Neural network-based methods are further classified as three parts according to the number of processing stages. Representative algorithms are described in detail, coupled with some typical techniques that are described briefly. Finally, we summarize the recent benchmarking results, give the discussions on the limitations of datasets and methods, and expand future research directions. To our knowledge, this is the first survey about masked facial detection methods and datasets. Hopefully our survey could provide some help to fight against epidemics.
翻译:2019年科罗纳病毒(COVID-19)病毒(COVID-19)自疾病爆发以来,继续给世界带来巨大挑战。为了防治这一疾病,我们开发了一系列人工智能(AI)技术,并应用于真实世界的情景,例如安全监测、疾病诊断、感染风险评估、COVID-19CT扫描的损伤分解等。科罗纳病毒流行病迫使人们戴面具以对抗病毒的传播,这也给监测戴面具的大批人群带来困难。在本文中,我们主要侧重于面部蒙面部检测和相关数据集的人工智能技术。我们从描述面部检测数据集的描述开始,对近期的进展进行调查,对13个现有数据集进行详细描述和讨论。然后,这些方法大致分为两类:常规方法和神经网络扫描方法。通常通过用手工制作的算法来提高算术,这些算出很小的比例。神经网络方法还被进一步分类为处理阶段的三个部分。我们的代表算法被详细描述,加上某些典型的面部位的面检测技术。然后对一些典型的面部位测量方法进行了详细描述,然后进行详细的描述,然后对研究,然后将数据进行简要地介绍。我们的研究,然后分析。我们将数据分析。我们的数据分析。