A Novel Social Distancing Analysis in Urban Public Space: A New Online Spatio-Temporal Trajectory Approach
Cheng, Yongqiang (2021) A Novel Social Distancing Analysis in Urban Public Space: A New Online Spatio-Temporal Trajectory Approach. Sustainable Cities and Society, 68. p. 102765. ISSN 2210-6707
Item Type: | Article |
---|
Abstract
Social distancing in public spaces plays a crucial role in controlling or slowing down the spread of coronavirus during the COVID-19 pandemic. The Visual Social Distancing (VSD) offers an opportunity for real-time measuring and analysing the physical distance between pedestrians using surveillance videos in public spaces. It can provide evidence for implementing effective prevention measures of the epidemic. The existing VSD methods developed in the literature are primarily based on frame-by-frame pedestrian detection, which addresses the VSD problem from a static and local perspective. In this paper, we propose a new online multi-pedestrian tracking approach for spatio-temporal trajectory and its application to multi-scale social distancing measuring and analysis. Firstly, an online multi-pedestrian tracking method is proposed to obtain the trajectories of pedestrians in public spaces, based on hierarchical data association. Then, a new VSD method based on sptatio-temporal trajectories is proposed. The proposed method not only considers the Euclidean distance between tracking objects frame by frame but also takes into account the discrete Fréchet distance between trajectories, hence forms a comprehensive solution from both static and dynamic, local and holistic perspectives. We evaluated the performance of the proposed tracking method using the public dataset MOT16 benchmark. We also collected our own pedestrian dataset “SCU-VSD” and designed a multi-scale VSD analysis scheme for benchmarking the performance of the social distancing monitoring in the crowd. Experiments have demonstrated that the proposed method achieved outstanding performance on the analysis of social distancing.
|
PDF
A New Online Spatio-temporal Trajectory Approach for Social Distancing Analysis Using Deep Feature Learning-revised author version.pdf Available under License Creative Commons Attribution Non-commercial No Derivatives. Download (5MB) | Preview |
More Information
Depositing User: Yongqiang Cheng |
Identifiers
Item ID: 18205 |
Identification Number: https://doi.org/10.1016/j.scs.2021.102765 |
ISSN: 2210-6707 |
URI: http://sure.sunderland.ac.uk/id/eprint/18205 | Official URL: https://www.sciencedirect.com/science/article/pii/... |
Users with ORCIDS
Catalogue record
Date Deposited: 24 Sep 2024 09:17 |
Last Modified: 07 Oct 2024 10:49 |
Author: | Yongqiang Cheng |
Author: | Yongqiang Cheng |
University Divisions
Faculty of Technology > School of Computer ScienceSubjects
Computing > Artificial IntelligenceActions (login required)
View Item (Repository Staff Only) |