Monitoring physical distancing for crowd management: Real-time trajectory and group analysis.

Physical distancing, as a measure to contain the spreading of Covid-19, is defining a "new normal". Unless belonging to a family, pedestrians in shared spaces are asked to observe a minimal (country-dependent) pairwise distance. Coherently, managers of public spaces may be tasked with the...

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Main Authors: Caspar A S Pouw, Federico Toschi, Frank van Schadewijk, Alessandro Corbetta
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2020-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0240963
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spelling doaj-084bfeb7048b4bad9002c2dbe7359fd92021-03-04T11:53:00ZengPublic Library of Science (PLoS)PLoS ONE1932-62032020-01-011510e024096310.1371/journal.pone.0240963Monitoring physical distancing for crowd management: Real-time trajectory and group analysis.Caspar A S PouwFederico ToschiFrank van SchadewijkAlessandro CorbettaPhysical distancing, as a measure to contain the spreading of Covid-19, is defining a "new normal". Unless belonging to a family, pedestrians in shared spaces are asked to observe a minimal (country-dependent) pairwise distance. Coherently, managers of public spaces may be tasked with the enforcement or monitoring of this constraint. As privacy-respectful real-time tracking of pedestrian dynamics in public spaces is a growing reality, it is natural to leverage on these tools to analyze the adherence to physical distancing and compare the effectiveness of crowd management measurements. Typical questions are: "in which conditions non-family members infringed social distancing?", "Are there repeated offenders?", and "How are new crowd management measures performing?". Notably, dealing with large crowds, e.g. in train stations, gets rapidly computationally challenging. In this work we have a two-fold aim: first, we propose an efficient and scalable analysis framework to process, offline or in real-time, pedestrian tracking data via a sparse graph. The framework tackles efficiently all the questions mentioned above, representing pedestrian-pedestrian interactions via vector-weighted graph connections. On this basis, we can disentangle distance offenders and family members in a privacy-compliant way. Second, we present a thorough analysis of mutual distances and exposure-times in a Dutch train platform, comparing pre-Covid and current data via physics observables as Radial Distribution Functions. The versatility and simplicity of this approach, developed to analyze crowd management measures in public transport facilities, enable to tackle issues beyond physical distancing, for instance the privacy-respectful detection of groups and the analysis of their motion patterns.https://doi.org/10.1371/journal.pone.0240963
collection DOAJ
language English
format Article
sources DOAJ
author Caspar A S Pouw
Federico Toschi
Frank van Schadewijk
Alessandro Corbetta
spellingShingle Caspar A S Pouw
Federico Toschi
Frank van Schadewijk
Alessandro Corbetta
Monitoring physical distancing for crowd management: Real-time trajectory and group analysis.
PLoS ONE
author_facet Caspar A S Pouw
Federico Toschi
Frank van Schadewijk
Alessandro Corbetta
author_sort Caspar A S Pouw
title Monitoring physical distancing for crowd management: Real-time trajectory and group analysis.
title_short Monitoring physical distancing for crowd management: Real-time trajectory and group analysis.
title_full Monitoring physical distancing for crowd management: Real-time trajectory and group analysis.
title_fullStr Monitoring physical distancing for crowd management: Real-time trajectory and group analysis.
title_full_unstemmed Monitoring physical distancing for crowd management: Real-time trajectory and group analysis.
title_sort monitoring physical distancing for crowd management: real-time trajectory and group analysis.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2020-01-01
description Physical distancing, as a measure to contain the spreading of Covid-19, is defining a "new normal". Unless belonging to a family, pedestrians in shared spaces are asked to observe a minimal (country-dependent) pairwise distance. Coherently, managers of public spaces may be tasked with the enforcement or monitoring of this constraint. As privacy-respectful real-time tracking of pedestrian dynamics in public spaces is a growing reality, it is natural to leverage on these tools to analyze the adherence to physical distancing and compare the effectiveness of crowd management measurements. Typical questions are: "in which conditions non-family members infringed social distancing?", "Are there repeated offenders?", and "How are new crowd management measures performing?". Notably, dealing with large crowds, e.g. in train stations, gets rapidly computationally challenging. In this work we have a two-fold aim: first, we propose an efficient and scalable analysis framework to process, offline or in real-time, pedestrian tracking data via a sparse graph. The framework tackles efficiently all the questions mentioned above, representing pedestrian-pedestrian interactions via vector-weighted graph connections. On this basis, we can disentangle distance offenders and family members in a privacy-compliant way. Second, we present a thorough analysis of mutual distances and exposure-times in a Dutch train platform, comparing pre-Covid and current data via physics observables as Radial Distribution Functions. The versatility and simplicity of this approach, developed to analyze crowd management measures in public transport facilities, enable to tackle issues beyond physical distancing, for instance the privacy-respectful detection of groups and the analysis of their motion patterns.
url https://doi.org/10.1371/journal.pone.0240963
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