Foot Traffic Analysis Using Wi-Fi Sensor During the Tokyo 2020 Olympics and Paralympics

dc.contributor.authorPeerada Traganmaturapot
dc.contributor.authorNoboru Sonehara
dc.contributor.authorNobuharu Hiruma
dc.contributor.authorNagul Cooharojananone
dc.contributor.authorJirakit Jirapongwanich
dc.contributor.authorKanat Yodsakuntip
dc.contributor.authorKanokwan Atchariyachanvanich
dc.date.accessioned2026-05-08T19:20:52Z
dc.date.issued2023-11-16
dc.description.abstractVarious real-world factors, such as time, weather, distance, environment, the COVID-19 pandemic, or even protests, can all impact human decision-making. However, restrictions and unexpected occurrences may also influence people’s decisions regarding their path at any given time. These factors can lead to challenges in managing foot traffic at largescale events. In response to these challenges, this paper proposes a data-driven web-based foot traffic management supporting dashboard for large-scale events based on limited pedestrian count data, consisting of sensor name, latitude, longitude, MAC address, Datetime, and RSSI, collected by Wi-Fi sensors around the Sendagaya area during the Tokyo 2020 Olympics and Paralympics. The results confirmed that our proposed web-based dashboard contributes to human behavior understanding and decision-supporting policymaking for foot traffic management, which improves the design of spectator movement between transportation and venues in large-scale events. Furthermore, the dashboard is valuable from various perspectives, including preventing crowd crushing, redesigning areas to increase engagement in the shopping district, and improving traffic management.
dc.identifier.doi10.1109/incit60207.2023.10413175
dc.identifier.urihttps://dspace.kmitl.ac.th/handle/123456789/17744
dc.subjectIndoor and Outdoor Localization Technologies
dc.subjectVideo Surveillance and Tracking Methods
dc.subjectGait Recognition and Analysis
dc.titleFoot Traffic Analysis Using Wi-Fi Sensor During the Tokyo 2020 Olympics and Paralympics
dc.typeArticle

Files

Collections