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http://dx.doi.org/10.33851/JMIS.2019.6.4.265

Positional Tracking System Using Smartphone Sensor Information  

Kim, Jung Yee (Department of Port Logistics System, Tongmyong University)
Publication Information
Journal of Multimedia Information System / v.6, no.4, 2019 , pp. 265-270 More about this Journal
Abstract
The technology to locate an individual has enabled various services, its utilization has increased. There were constraints such as the use of separate expensive equipment or the installation of specific devices on a facility, with most of the location technology studies focusing on the accuracy of location verification. These constraints can result in accuracy within a few tens of centimeters, but they are not technology that can be applied to a user's location in real-time in daily life. Therefore, this paper aims to track the locations of smartphones only using the basic components of smartphones. Based on smartphone sensor data, localization accuracy that can be used for verification of the users' locations is aimed at. Accelerometers, Wifi radio maps, and GPS sensor information are utilized to implement it. In forging the radio map, signal maps were built at each vertex based on the graph data structure This approach reduces traditional map-building efforts at the offline phase. Accelerometer data were made to determine the user's moving status, and the collected sensor data were fused using particle filters. Experiments have shown that the average user's location error is about 3.7 meters, which makes it reasonable for providing location-based services in everyday life.
Keywords
Localization; Sensor fusion; WiFi Radio Map; Accelerometer;
Citations & Related Records
Times Cited By KSCI : 2  (Citation Analysis)
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