Guo Shihui, Yu Jubo, Shi Xinyu, Wang Hongran, Xie Feibin, Gao Xing, Jiang Min
School of Informatics, Xiamen University, Xiamen, China.
Department of Orthopaedic Trauma, Zhongshan Hospital, Xiamen University, Xiamen, China.
Front Neurorobot. 2020 Jan 21;13:113. doi: 10.3389/fnbot.2019.00113. eCollection 2019.
We propose an automatic method to identify people who are potentially-infected by droplet-transmitted diseases. This high-risk group of infection was previously identified by conducting large-scale visits/interviews, or manually screening among tons of recorded surveillance videos. Both are time-intensive and most likely to delay the control of communicable diseases like influenza. In this paper, we address this challenge by solving a multi-tasking problem from the captured surveillance videos. This multi-tasking framework aims to model the principle of Close Proximity Interaction and thus infer the infection risk of individuals. The complete workflow includes three essential sub-tasks: (1) person re-identification (REID), to identify the diagnosed patient and infected individuals across different cameras, (2) depth estimation, to provide a spatial knowledge of the captured environment, (3) pose estimation, to evaluate the distance between the diagnosed and potentially-infected subjects. Our method significantly reduces the time and labor costs. We demonstrate the advantages of high accuracy and efficiency of our method. Our method is expected to be effective in accelerating the process of identifying the potentially infected group and ultimately contribute to the well-being of public health.
我们提出了一种自动方法来识别可能感染飞沫传播疾病的人群。此前,这一高感染风险群体是通过大规模走访/访谈,或在大量录制的监控视频中进行人工筛查来识别的。这两种方法都很耗时,而且极有可能延误对流感等传染病的控制。在本文中,我们通过解决从捕获的监控视频中提取的多任务问题来应对这一挑战。这个多任务框架旨在模拟近距离互动原则,从而推断个体的感染风险。完整的工作流程包括三个基本子任务:(1)行人重识别(REID),用于跨不同摄像头识别确诊患者和受感染个体;(2)深度估计,用于提供所捕获环境的空间信息;(3)姿态估计,用于评估确诊者与潜在感染者之间的距离。我们的方法显著降低了时间和人力成本。我们展示了我们方法的高精度和高效率优势。我们的方法有望有效加速识别潜在感染群体的过程,并最终为公共卫生福祉做出贡献。