Adaptive Sampling of RF Fingerprints for Fine-grained Indoor Localization
Xiao-Yang Liu, Shuchin Aeron, Vaneet Aggarwal, Xiaodong Wang, Min-You, Wu

TL;DR
This paper introduces an adaptive sampling method for RF fingerprint-based indoor localization, significantly reducing the data collection effort while maintaining accuracy by leveraging tensor algebraic techniques.
Contribution
It proposes a novel tensor-based adaptive sampling scheme that improves efficiency in building RF fingerprint databases for indoor localization.
Findings
Reduces sampling by up to 71% in high SNR scenarios
Maintains localization accuracy comparable to existing methods
Validates approach on both simulated and real-world data
Abstract
Indoor localization is a supporting technology for a broadening range of pervasive wireless applications. One promis- ing approach is to locate users with radio frequency fingerprints. However, its wide adoption in real-world systems is challenged by the time- and manpower-consuming site survey process, which builds a fingerprint database a priori for localization. To address this problem, we visualize the 3-D RF fingerprint data as a function of locations (x-y) and indices of access points (fingerprint), as a tensor and use tensor algebraic methods for an adaptive tubal-sampling of this fingerprint space. In particular using a recently proposed tensor algebraic framework in [1] we capture the complexity of the fingerprint space as a low-dimensional tensor-column space. In this formulation the proposed scheme exploits adaptivity to identify reference points which are highly informative…
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