具有社交距离测量功能的基于虚拟现实的办公空间数字孪生

Q1 Computer Science Virtual Reality Intelligent Hardware Pub Date : 2022-02-01 DOI:10.1016/j.vrih.2022.01.004
Abhishek Mukhopadhyay , G S Rajshekar Reddy , KamalPreet Singh Saluja , Subhankar Ghosh , Anasol Peña-Rios , Gokul Gopal , Pradipta Biswas
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引用次数: 12

摘要

保持社会距离是减少新冠病毒传播的有效途径。许多学生和研究人员已经尝试使用计算机视觉技术来自动检测相机视野内的人类,并帮助加强社交距离。然而,由于一些国家目前采取了封锁措施,使用大规模数据集验证计算机视觉系统是一项挑战。方法提出了一种利用虚拟现实技术生成定制数据集和验证基于深度学习的计算机视觉模型的新方法。使用VR,我们模拟了一个现有办公空间的数字双胞胎(DT),并用它来创建一个不同姿势、着装和位置的个人数据集。为了测试提出的解决方案,我们实现了一个卷积神经网络(CNN)模型,用于在一个有限大小的真人数据集和一个模拟人形数据集中检测人。结果真实数据集和合成数据集的人数检测准确率均在90%以上,实际距离和测量距离呈显著相关(r=0.99)。最后,我们使用基于间歇层和热图的数据可视化技术来解释CNN的失效模式。结论通过测量个体之间的社会距离,提出了一种新的应用方法来提高工作场所的安全性。使用我们提出的管道以及共享空间的DT来可视化环境和人类行为方面,可以保护个人的隐私,并改善此类监控系统的延迟,因为只有提取的信息才会流化。
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Virtual-reality-based digital twin of office spaces with social distance measurement feature

Background

Social distancing is an effective way to reduce the spread of the SARS-CoV-2 virus. Many students and researchers have already attempted to use computer vision technology to automatically detect human beings in the field of view of a camera and help enforce social distancing. However, because of the present lockdown measures in several countries, the validation of computer vision systems using large-scale datasets is a challenge.

Methods

In this paper, a new method is proposed for generating customized datasets and validating deep-learning-based computer vision models using virtual reality (VR) technology. Using VR, we modeled a digital twin (DT) of an existing office space and used it to create a dataset of individuals in different postures, dresses, and locations. To test the proposed solution, we implemented a convolutional neural network (CNN) model for detecting people in a limited-sized dataset of real humans and a simulated dataset of humanoid figures.

Results

We detected the number of persons in both the real and synthetic datasets with more than 90% accuracy, and the actual and measured distances were significantly correlated (r=0.99). Finally, we used intermittent-layer- and heatmap-based data visualization techniques to explain the failure modes of a CNN.

Conclusions

A new application of DTs is proposed to enhance workplace safety by measuring the social distance between individuals. The use of our proposed pipeline along with a DT of the shared space for visualizing both environmental and human behavior aspects preserves the privacy of individuals and improves the latency of such monitoring systems because only the extracted information is streamed.

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来源期刊
Virtual Reality  Intelligent Hardware
Virtual Reality Intelligent Hardware Computer Science-Computer Graphics and Computer-Aided Design
CiteScore
6.40
自引率
0.00%
发文量
35
审稿时长
12 weeks
期刊最新文献
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