Health organizations advise social distancing, wearing face mask, and avoiding touching face to prevent the spread of coronavirus. Based on these protective measures, we developed a computer vision system to help prevent the transmission of COVID-19. Specifically, the developed system performs face mask detection, face-hand interaction detection, and measures social distance. To train and evaluate the developed system, we collected and annotated images that represent face mask usage and face-hand interaction in the real world. Besides assessing the performance of the developed system on our own datasets, we also tested it on existing datasets in the literature without performing any adaptation on them. In addition, we proposed a module to track social distance between people. Experimental results indicate that our datasets represent the real-world's diversity well. The proposed system achieved very high performance and generalization capacity for face mask usage detection, face-hand interaction detection, and measuring social distance in a real-world scenario on unseen data. The datasets will be available at https://github.com/iremeyiokur/COVID-19-Preventions-Control-System.
翻译:根据这些保护措施,我们开发了一个计算机视觉系统,以帮助防止COVID-19的传播。具体地说,发达的系统进行面罩检测、面部互动检测,并测量社会距离。为了对发达的系统进行训练和评估,我们收集了在现实世界中代表面罩使用和面部互动的附加说明的图像。除了在我们自己数据集中评估发达系统的性能外,我们还在文献中对现有数据集进行了测试,但没有对数据集进行任何修改。此外,我们提出了一个模块,以跟踪人与人之间的社会距离。实验结果显示,我们的数据集代表了真实世界的多样性。拟议的系统在面罩使用检测、面部互动检测和测量真实世界中看不见数据情景的社会距离方面实现了极高的性能和普及性能力。数据集将在https://github.com/iremeyokur/COVID-19-Preventions- control-System上查阅。