GATE: Graph Attention Neural Networks with Real-Time Edge Construction for Robust Indoor Localization using Mobile Embedded Devices
Danish Gufran, Sudeep Pasricha

TL;DR
GATE is a novel graph neural network framework that enhances indoor localization accuracy on mobile devices by dynamically modeling spatial and signal relationships, effectively handling noise and device heterogeneity.
Contribution
GATE introduces adaptive graph construction, attention hyperspace vectors, and real-time edge updates to improve robustness and accuracy in indoor localization using GNNs.
Findings
Achieves 1.6x to 4.72x lower mean localization errors.
Reduces worst-case errors by up to 4.57x.
Demonstrates robustness across diverse indoor environments and devices.
Abstract
Accurate indoor localization is crucial for enabling spatial context in smart environments and navigation systems. Wi-Fi Received Signal Strength (RSS) fingerprinting is a widely used indoor localization approach due to its compatibility with mobile embedded devices. Deep Learning (DL) models improve accuracy in localization tasks by learning RSS variations across locations, but they assume fingerprint vectors exist in a Euclidean space, failing to incorporate spatial relationships and the non-uniform distribution of real-world RSS noise. This results in poor generalization across heterogeneous mobile devices, where variations in hardware and signal processing distort RSS readings. Graph Neural Networks (GNNs) can improve upon conventional DL models by encoding indoor locations as nodes and modeling their spatial and signal relationships as edges. However, GNNs struggle with…
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Taxonomy
TopicsIndoor and Outdoor Localization Technologies · Video Surveillance and Tracking Methods · Energy Efficient Wireless Sensor Networks
