LGSPJan 29

Spatially-Adaptive Conformal Graph Transformer for Indoor Localization in Wi-Fi Driven Networks

arXiv:2601.22322v11 citationsh-index: 8
Originality Incremental advance
AI Analysis

This work addresses the need for reliable uncertainty quantification in indoor localization for applications like navigation and asset tracking, representing an incremental improvement over existing graph-based models.

The paper tackles the problem of indoor localization in Wi-Fi networks by proposing a framework that integrates a Graph Transformer with a novel conformal prediction method, achieving state-of-the-art accuracy and providing statistically valid, region-specific uncertainty estimates.

Indoor localization is a critical enabler for a wide range of location-based services in smart environments, including navigation, asset tracking, and safety-critical applications. Recent graph-based models leverage spatial relationships between Wire-less Fidelity (Wi-Fi) Access Points (APs) and devices, offering finer localization granularity, but fall short in quantifying prediction uncertainty, a key requirement for real-world deployment. In this paper, we propose Spatially-Adaptive Conformal Graph Transformer (SAC-GT), a framework for accurate and reliable indoor localization. SAC-GT integrates a Graph Transformer (GT) model that captures network's spatial topology and signal strength dynamics, with a novel Spatially-Adaptive Conformal Prediction (SACP) method that provides region-specific uncertainty estimates. This allows SAC-GT to produce not only precise two-dimensional (2D) location predictions but also statistically valid confidence regions tailored to varying environmental conditions. Extensive evaluations on a large-scale real-world dataset demonstrate that the proposed SAC-GT solution achieves state-of-the-art localization accuracy while delivering robust and spatially adaptive reliability guarantees.

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