论文标题
深度学习框架从视频录像中检测面罩
Deep Learning Framework to Detect Face Masks from Video Footage
论文作者
论文摘要
自Covid-19全球大流行以来,在公共场所使用面罩已成为一种社会义务,并且必须确定面部面具以确保公共安全是必须的。视频镜头中对面膜的发现是一项具有挑战性的任务,这主要是因为面具本身的行为作为遮挡,因为掩盖区域中没有面部地标,面对检测算法。在这项工作中,我们提出了一种使用深度学习在视频中检测面罩的方法。拟议的框架大写了MTCNN面部检测模型,以识别视频框架中存在的面部及其相应的面部标志。然后,这些面部图像和提示将由Neoteric分类器处理,该分类器利用MobilenEtv2架构作为识别蒙版区域的对象检测器。提出的框架在数据集上进行了测试,该数据集是一组视频集合,捕获了公共空间中人们的运动,同时遵守了COVID-19的安全协议。提出的方法证明了其通过高精度,召回和准确性来检测面膜的有效性。
The use of facial masks in public spaces has become a social obligation since the wake of the COVID-19 global pandemic and the identification of facial masks can be imperative to ensure public safety. Detection of facial masks in video footages is a challenging task primarily due to the fact that the masks themselves behave as occlusions to face detection algorithms due to the absence of facial landmarks in the masked regions. In this work, we propose an approach for detecting facial masks in videos using deep learning. The proposed framework capitalizes on the MTCNN face detection model to identify the faces and their corresponding facial landmarks present in the video frame. These facial images and cues are then processed by a neoteric classifier that utilises the MobileNetV2 architecture as an object detector for identifying masked regions. The proposed framework was tested on a dataset which is a collection of videos capturing the movement of people in public spaces while complying with COVID-19 safety protocols. The proposed methodology demonstrated its effectiveness in detecting facial masks by achieving high precision, recall, and accuracy.