Social distancing in public spaces has become an essential aspect in helping to reduce the impact of the COVID-19 pandemic. Exploiting recent advances in machine learning, there have been many studies in the literature implementing social distancing via object detection through the use of surveillance cameras in public spaces. However, to date, there has been no study of social distance measurement on public transport. The public transport setting has some unique challenges, including some low-resolution images and camera locations that can lead to the partial occlusion of passengers, which make it challenging to perform accurate detection. Thus, in this paper, we investigate the challenges of performing accurate social distance measurement on public transportation. We benchmark several state-of-the-art object detection algorithms using real-world footage taken from the London Underground and bus network. The work highlights the complexity of performing social distancing measurement on images from current public transportation onboard cameras. Further, exploiting domain knowledge of expected passenger behaviour, we attempt to improve the quality of the detections using various strategies and show improvement over using vanilla object detection alone.
翻译:利用最近在机器学习方面取得的进步,在文献中进行了许多研究,通过在公共场所使用监视摄像机进行物体探测,进行社会隐蔽;然而,迄今为止,尚未研究公共交通的社会距离测量;公共交通环境面临一些独特的挑战,包括一些低分辨率图像和照相机位置,可能导致部分隔离乘客,因此难以进行准确的探测。因此,我们在本文件中调查了在公共交通方面进行准确的社会距离测量的挑战。我们用伦敦地下和公共汽车网络摄取的实景图像,对一些最先进的物体探测算法进行了基准。这项工作突出表明了对目前公共交通摄像头上的图像进行社会隐蔽测量的复杂性。此外,利用预期乘客行为的域知识,我们试图利用各种战略提高探测质量,并单独利用香草物体探测显示改进情况。