Meta-SimGNN: Adaptive and Robust WiFi Localization Across Dynamic Configurations and Diverse Scenarios
Qiqi Xiao, Ziqi Ye, Yinghui He, Jianwei Liu, Guanding Yu

TL;DR
Meta-SimGNN is a novel WiFi localization system that combines graph neural networks and meta-learning to adapt to changes in device configurations and environmental scenarios, improving robustness and accuracy.
Contribution
It introduces a CSI graph construction scheme and a similarity-guided meta-learning strategy to handle variations in device configurations and scenarios.
Findings
Outperforms baseline methods in localization accuracy
Demonstrates robustness across diverse WiFi scenarios
Enhances adaptability to device configuration changes
Abstract
To promote the practicality of deep learning-based localization, existing studies aim to address the issue of scenario dependence through meta-learning. However, these studies primarily focus on variations in environmental layouts while overlooking the impact of changes in device configurations, such as bandwidth, the number of access points (APs), and the number of antennas used. Unlike environmental changes, variations in device configurations affect the dimensionality of channel state information (CSI), thereby compromising neural network usability. To address this issue, we propose Meta-SimGNN, a novel WiFi localization system that integrates graph neural networks with meta-learning to improve localization generalization and robustness. First, we introduce a fine-grained CSI graph construction scheme, where each AP is treated as a graph node, allowing for adaptability to changes in…
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Taxonomy
TopicsIndoor and Outdoor Localization Technologies · Wireless Networks and Protocols · Millimeter-Wave Propagation and Modeling
