论文标题

深度社会:社会距离监测和感染风险评估,19009

DeepSOCIAL: Social Distancing Monitoring and Infection Risk Assessment in COVID-19 Pandemic

论文作者

Rezaei, Mahdi, Azarmi, Mohsen

论文摘要

社会疏远是世界卫生组织(WHO)推荐的解决方案,以最大程度地减少Covid-19在公共场所的传播。大多数政府和国家卫生当局将2米的物理距离设定为购物中心,学校和其他涵盖地区的强制性安全措施。在这项研究中,我们使用常见的CCTV安全摄像头开发了一种混合计算机视觉和基于Yolov4的深神经网络模型,以在室内和室外环境中的人群中的自动化人群中检测。提出的DNN模型与适应的反视角映射(IPM)技术和分类跟踪算法结合使用,导致了强大的人检测和社交疏远监测。在研究时,该模型已针对两个最全面的数据集进行了培训,即Microsoft Common在上下文(MS COCO)和Google Open Image数据集中进行培训。与三种最先进的方法相比,该系统已针对牛津市中心中心数据集进行了评估。该评估是在具有挑战性的条件下进行的,包括遮挡,部分可见性,在照明变化下,平均平均精度为99.8%,实时速度为24.1 fps。我们还通过对人们移动轨迹的时空数据和社会疏远违规率的时空数据进行统计分析提供在线感染风险评估计划。开发的模型是一种通用,准确的人检测和跟踪解决方案,可以应用于许多其他领域,例如自动驾驶汽车,人类行动识别,异常检测,体育,人群分析或任何其他人类发现位于关注中心的研究领域。

Social distancing is a recommended solution by the World Health Organisation (WHO) to minimise the spread of COVID-19 in public places. The majority of governments and national health authorities have set the 2-meter physical distancing as a mandatory safety measure in shopping centres, schools and other covered areas. In this research, we develop a hybrid Computer Vision and YOLOv4-based Deep Neural Network model for automated people detection in the crowd in indoor and outdoor environments using common CCTV security cameras. The proposed DNN model in combination with an adapted inverse perspective mapping (IPM) technique and SORT tracking algorithm leads to a robust people detection and social distancing monitoring. The model has been trained against two most comprehensive datasets by the time of the research the Microsoft Common Objects in Context (MS COCO) and Google Open Image datasets. The system has been evaluated against the Oxford Town Centre dataset with superior performance compared to three state-of-the-art methods. The evaluation has been conducted in challenging conditions, including occlusion, partial visibility, and under lighting variations with the mean average precision of 99.8% and the real-time speed of 24.1 fps. We also provide an online infection risk assessment scheme by statistical analysis of the Spatio-temporal data from people's moving trajectories and the rate of social distancing violations. The developed model is a generic and accurate people detection and tracking solution that can be applied in many other fields such as autonomous vehicles, human action recognition, anomaly detection, sports, crowd analysis, or any other research areas where the human detection is in the centre of attention.

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