TL;DR
WiCluster is a novel machine learning approach for passive indoor positioning using WiFi CSI data, achieving accurate 2D/3D localization without precise labels and performing well in complex, non-line-of-sight environments.
Contribution
It introduces a new dimensionality reduction and weakly supervised learning method for indoor positioning that requires minimal labeled data and works in real-world scenarios.
Findings
Achieves meter-level accuracy in 2D and 3D positioning.
Works effectively in non-line-of-sight conditions.
Validated in office buildings and a two-story home.
Abstract
We introduce WiCluster, a new machine learning (ML) approach for passive indoor positioning using radio frequency (RF) channel state information (CSI). WiCluster can predict both a zone-level position and a precise 2D or 3D position, without using any precise position labels during training. Prior CSI-based indoor positioning work has relied on non-parametric approaches using digital signal-processing (DSP) and, more recently, parametric approaches (e.g., fully supervised ML methods). However these do not handle the complexity of real-world environments well and do not meet requirements for large-scale commercial deployments: the accuracy of DSP-based method deteriorates significantly in non-line-of-sight conditions, while supervised ML methods need large amounts of hard-to-acquire centimeter accuracy position labels. In contrast, WiCluster is precise, requires weaker label-information…
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