WiFi Positioning with Mobility-Induced Graphs

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초록

This paper introduces a novel approach, mobility-induced graph learning (MINGLE), to enhance the accuracy of Wi-Fi positioning. Traditional Wi-Fi positioning methods often struggle with accuracy due to obstructions and interference. MINGLE addresses these challenges by converting user movement patterns into graphs, which are then analyzed using graph neural network. This method involves creating two types of graphs, based on the time and direction of user mobility, and employs a novel cross-graph learning technique in conjunction with self-supervised learning. This approach has demonstrated significant improvements in positioning accuracy, achieving a remarkable accuracy of 1:301 (m) in an underground parking lot setting, without relying on labeled data samples.

키워드

WiFi positioninggraph neural networkmobility-induced graphgraph convolution networkcross-graph learningmobility-regularization term
제목
WiFi Positioning with Mobility-Induced Graphs
저자
Han, KyuwonYu, Seung MinKim, Seong-LyunKo, Seung-Woo
DOI
10.1109/VTC2024-SPRING62846.2024.10683593
발행일
2024
유형
Proceedings Paper
저널명
2024 IEEE 99TH VEHICULAR TECHNOLOGY CONFERENCE, VTC2024-SPRING