ITOCMLAug 10, 2015

Adaptive Sampling of RF Fingerprints for Fine-grained Indoor Localization

arXiv:1508.02324v299 citations
Originality Incremental advance
AI Analysis

This work addresses the efficiency problem for real-world indoor localization systems, offering a significant reduction in data collection effort, though it is incremental as it builds on existing tensor methods.

The paper tackles the time-consuming site survey process for indoor localization using RF fingerprints by proposing an adaptive tubal-sampling method based on tensor algebra, which reduces the required samples by 71% for high SNR and 55% for low SNR while maintaining localization accuracy.

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 for learning this low-dimensional space. Further, under certain incoherency conditions we prove that the proposed scheme achieves bounded recovery error and near-optimal sampling complexity. In contrast to several existing work that rely on random sampling, this paper shows that adaptivity in sampling can lead to significant improvements in localization accuracy. The approach is validated on both data generated by the ray-tracing indoor model which accounts for the floor plan and the impact of walls and the real world data. Simulation results show that, while maintaining the same localization accuracy of existing approaches, the amount of samples can be cut down by 71% for the high SNR case and 55% for the low SNR case.

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