通过深度学习和基于vr的数字双胞胎验证社交距离

Abhishek Mukhopadhyay, G. S. R. Reddy, Subhankar Ghosh, L. Murthy, P. Biswas
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引用次数: 6

摘要

新冠肺炎大流行给全球经济造成了灾难性损失,保持社交距离一直被认为是遏制病毒传播的有效手段。然而,只有当每个人都以同样的热情参与其中时,它才会有效。过去的文献概述了使用计算机视觉来检测人并自动执行社交距离的场景。我们为现有的实验室空间创建了一个数字双胞胎(DT),用于远程监控房间占用情况并自动检测违反社交距离的行为。为了评估提出的解决方案,我们实现了一个卷积神经网络(CNN)模型,用于在有限大小的真人数据集和人形人物的合成数据集中检测人。我们提出的计算机视觉模型在准确检测人、姿势和人与人之间的中间距离方面得到了真实和合成数据的验证。
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Validating Social Distancing through Deep Learning and VR-Based Digital Twins
The Covid-19 pandemic resulted in a catastrophic loss to global economies, and social distancing was consistently found to be an effective means to curb the virus's spread. However, it is only as effective when every individual partakes in it with equal alacrity. Past literature outlined scenarios where computer vision was used to detect people and to enforce social distancing automatically. We have created a Digital Twin (DT) of an existing laboratory space for remote monitoring of room occupancy and automatically detecting violation of social distancing. To evaluate the proposed solution, we have implemented a Convolutional Neural Network (CNN) model for detecting people, both in a limited-sized dataset of real humans, and a synthetic dataset of humanoid figures. Our proposed computer vision models are validated for both real and synthetic data in terms of accurately detecting persons, posture, and intermediate distances among people.
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