Comparative Sequential Pattern Mining of Human Trajectory Data Collected from a Campus-wide BLE Beacon System

Shinsuke Kajioka, Takuto Sakuma, I. Takeuchi
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Abstract

Many social issues are expected to be addressed by collecting human trajectory data and analyzing them. As a demonstration study, we need a continuous and instant localization and trajectory collection system. We have developed a localization system using Bluetooth Low Energy (BLE) beacons and smartphones in our college campus. The system has been established to realize automated student roll call with 1, 600 BLE beacon emitters installed on our campus. We can estimate the location of a smartphone in our campus by analyzing received BLE beacons and their RSSIs (Received Signal Strength Indicators). In this paper, we demonstrate how we collect human trajectory data and how we can detect specific human behaviors from the collected data. We have obtained human trajectory data from 169 research participants comprised of 671 trips during the study held as a college festival event. Each research participant walked around with his/her smartphone. The smartphone continuously received BLE beacons during the event and periodically sent them to the server as a trajectory. We apply comparative sequential pattern mining to the obtained trajectory data and extract sequential patterns that are different between male trajectories and female trajectories. This study demonstrates the effectiveness of human trajectory data collection by a BLE beacon system and data analysis by comparative sequential pattern mining.
从校园范围内的BLE信标系统收集的人类轨迹数据的比较顺序模式挖掘
许多社会问题有望通过收集人类轨迹数据并对其进行分析来解决。作为示范研究,我们需要一个连续的、即时的定位和轨迹收集系统。我们已经在我们的大学校园里开发了一个使用低功耗蓝牙信标和智能手机的定位系统。在我校校园内安装了1600个BLE信标发射器,实现了学生的自动点名。我们可以通过分析接收到的BLE信标及其rssi(接收信号强度指标)来估计校园内智能手机的位置。在本文中,我们演示了如何收集人类轨迹数据以及如何从收集到的数据中检测特定的人类行为。我们获得了169名研究参与者的人类轨迹数据,这些数据包括在作为大学节日活动举行的研究期间的671次旅行。每个研究参与者都带着他/她的智能手机走来走去。智能手机在活动期间持续接收BLE信标,并定期将其作为轨迹发送到服务器。我们对获得的轨迹数据进行比较序列模式挖掘,提取出男性轨迹和女性轨迹之间不同的序列模式。本研究证明了通过BLE信标系统收集人体轨迹数据和通过比较顺序模式挖掘进行数据分析的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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