Clustering Indoor Location Data for Social Distancing and Human Mobility to Combat COVID-19
IF 2
4区 计算机科学
Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS
K. R. Uthayan, G. Lakshmi Vara Prasad, V. Mohan, C. Bharatiraja, Irina V. Pustokhina, Denis A. Pustokhin, Vicente Garc韆 D韆z
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引用次数: 2
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Abstract
The world is experiencing the unprecedented time of a pandemic caused by the coronavirus disease (i.e., COVID-19). As a countermeasure, contact tracing and social distancing are essential to prevent the transmission of the virus, which can be achieved using indoor location analytics. Based on the indoor location analytics, the human mobility on a site can be monitored and planned to minimize human's contact and enforce social distancing to contain the transmission of COVID-19. Given the indoor location data, the clustering can be applied to cluster spatial data, spatio-temporal data and movement behavior features for proximity detection or contact tracing applications. More specifically, we propose the Coherent Moving Cluster (CMC) algorithm for contact tracing, the density-based clustering (DBScan) algorithm for identification of hotspots and the trajectory clustering (TRACLUS) algorithm for clustering indoor trajectories. The feature extraction mechanism is then developed to extract useful and valuable features that can assist the proposed system to construct the network of users based on the similarity of themovement behaviors of the users. The network of users is used to model an optimization problem to manage the human mobility on a site. The objective function is formulated to minimize the probability of contact between the users and the optimization problem is solved using the proposed effective scheduling solution based on OR-Tools. The simulation results show that the proposed indoor location analytics system outperforms the existing clustering methods by about 30% in terms of accuracy of clustering trajectories. By adopting this system for human mobility management, the count of close contacts among the users within a confined area can be reduced by 80% in the scenario where all users are allowed to access the site. © 2022 Tech Science Press. All rights reserved.
聚类室内位置数据以保持社交距离和人员流动以应对COVID-19
世界正在经历前所未有的冠状病毒病(即COVID-19)大流行时期。作为对策,接触者追踪和保持社会距离对于防止病毒传播至关重要,这可以通过室内定位分析来实现。基于室内位置分析,可以监测和规划站点内的人员流动,以最大限度地减少人员接触,并强制保持社交距离,以遏制COVID-19的传播。基于室内位置数据,聚类可以应用于聚类空间数据、时空数据和运动行为特征,用于接近检测或接触跟踪应用。更具体地说,我们提出了用于接触追踪的相干移动聚类(CMC)算法,用于识别热点的基于密度的聚类(DBScan)算法和用于聚类室内轨迹的轨迹聚类(TRACLUS)算法。然后开发了特征提取机制,以提取有用和有价值的特征,这些特征可以帮助所提出的系统基于用户运动行为的相似性构建用户网络。利用用户网络来建模一个优化问题,以管理站点上的人员移动性。以最小化用户之间的接触概率为目标函数,利用提出的基于OR-Tools的有效调度方案求解优化问题。仿真结果表明,所提出的室内位置分析系统的聚类轨迹精度比现有的聚类方法提高了30%左右。通过采用该系统进行人员流动管理,在允许所有用户进入站点的情况下,在受限区域内用户之间的密切接触次数可以减少80%。©2022科技科学出版社。版权所有。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
来源期刊
期刊介绍:
This journal publishes original research papers in the areas of computer networks, artificial intelligence, big data management, software engineering, multimedia, cyber security, internet of things, materials genome, integrated materials science, data analysis, modeling, and engineering of designing and manufacturing of modern functional and multifunctional materials.
Novel high performance computing methods, big data analysis, and artificial intelligence that advance material technologies are especially welcome.