SPAILGMay 17, 2022

Multi-Head Attention Neural Network for Smartphone Invariant Indoor Localization

arXiv:2205.08069v128 citationsh-index: 36
AI Analysis

This addresses a critical challenge for users of smartphone-based indoor localization services by making the system resilient to variations across different devices.

The paper tackles the problem of device heterogeneity degrading RSSI fingerprinting accuracy for indoor localization by proposing a multi-head attention neural network framework, achieving up to 35% accuracy improvement over state-of-the-art techniques.

Smartphones together with RSSI fingerprinting serve as an efficient approach for delivering a low-cost and high-accuracy indoor localization solution. However, a few critical challenges have prevented the wide-spread proliferation of this technology in the public domain. One such critical challenge is device heterogeneity, i.e., the variation in the RSSI signal characteristics captured across different smartphone devices. In the real-world, the smartphones or IoT devices used to capture RSSI fingerprints typically vary across users of an indoor localization service. Conventional indoor localization solutions may not be able to cope with device-induced variations which can degrade their localization accuracy. We propose a multi-head attention neural network-based indoor localization framework that is resilient to device heterogeneity. An in-depth analysis of our proposed framework across a variety of indoor environments demonstrates up to 35% accuracy improvement compared to state-of-the-art indoor localization techniques.

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