BEV-Net: Assessing Social Distancing Compliance by Joint People Localization and Geometric Reasoning

Zhirui Dai, Yue-Ren Jiang, Yi Li, Bo Liu, Antoni B. Chan, Nuno Vasconcelos
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引用次数: 6

Abstract

Social distancing, an essential public health measure to limit the spread of contagious diseases, has gained significant attention since the outbreak of the COVID-19 pandemic. In this work, the problem of visual social distancing compliance assessment in busy public areas, with wide field-of-view cameras, is considered. A dataset of crowd scenes with people annotations under a bird’s eye view (BEV) and ground truth for metric distances is introduced, and several measures for the evaluation of social distance detection systems are proposed. A multi-branch network, BEV-Net, is proposed to localize individuals in world coordinates and identify high-risk regions where social distancing is violated. BEV-Net combines detection of head and feet locations, camera pose estimation, a differentiable homography module to map image into BEV coordinates, and geometric reasoning to produce a BEV map of the people locations in the scene. Experiments on complex crowded scenes demonstrate the power of the approach and show superior performance over baselines derived from methods in the literature. Applications of interest for public health decision makers are finally discussed. Datasets, code and pretrained models are publicly available at GitHub1.
BEV-Net:通过联合人员定位和几何推理评估社会距离依从性
保持社交距离是限制传染病传播的重要公共卫生措施,自新冠肺炎疫情爆发以来备受关注。在这项工作中,研究了在繁忙的公共区域,使用宽视场摄像机的视觉社会距离合规评估问题。介绍了一种鸟瞰下带有人物注释的人群场景数据集和度量距离的地面真值数据集,并提出了几种评价社会距离检测系统的方法。提出了一种多分支网络BEV-Net,用于在世界坐标上对个体进行定位,并识别违反社交距离的高风险区域。BEV- net结合了头和脚位置检测、相机姿态估计、可微分单应性模块将图像映射到BEV坐标,以及几何推理来生成场景中人物位置的BEV地图。在复杂拥挤场景上的实验证明了该方法的强大功能,并显示出优于文献中方法衍生的基线的性能。最后讨论了公共卫生决策者感兴趣的应用。数据集、代码和预训练模型在GitHub1上公开可用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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