Smart City Gnosys

Smart city article details

Title Blece: Ble-Based Crowdedness Estimation Method For Restaurants And Public Facilities
ID_Doc 12317
Authors Matsuda Y.; Ueda K.; Taya E.; Suwa H.; Yasumoto K.
Year 2023
Published 2023 14th International Conference on Mobile Computing and Ubiquitous Network, ICMU 2023
DOI http://dx.doi.org/10.23919/ICMU58504.2023.10412158
Abstract The crowdedness in various places in the city, such as public transportation, restaurants, and public facilities, is high-demand information for not only general people but also municipalities and companies. However, it is not easy to acquire comprehensive data because existing services of crowdedness measurement separately collect and provide data in different ways, although there are many services. This study aims to establish the universal method of crowdedness estimation, which is robust to various environments, by scanning BLE (Bluetooth Low Energy) signals emitted from mobile devices owned by general people. In this paper, we focus on restaurants and public facilities with different types, conditions, and sizes and propose a method of crowdedness estimation by fusing data obtained from other numbers of BLE scanners depending on each space. As a result, we confirmed that models trained with the same feature set for each space show a practical performance. Additionally, we explore the technical challenges when implementing the system in a new space through detailed analysis. © 2023 IPSJ.
Author Keywords Blue-Tooth Low Energy; Crowdedness Estimation; IoT; Smart City


Similar Articles


Id Similarity Authors Title Published
48369 View0.869Bessho M.; Sakamura K.Sensing Street-Level Crowd Density By Observing Public Bluetooth Low Energy Advertisements From Contact Tracing Applications2021 IEEE International Smart Cities Conference, ISC2 2021 (2021)