ITITMay 11

Survey-Free Radio Map Construction via HMM-Based Coarse-to-Fine Inference

arXiv:2605.1103852.0
Predicted impact top 15% in IT · last 90 daysOriginality Incremental advance
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It addresses the labor-intensive data collection problem for radio map construction in indoor localization, but is limited to corridor-guided environments with unidirectional pedestrian flow.

The paper proposes a survey-free radio map construction method using unlabeled RSS measurements and an HMM-based coarse-to-fine inference framework, achieving a radio map MAE of 8.96 dB and average positioning error of 3.33 meters in an office environment.

Traditional radio map construction methods mandate labor-intensive data collection and precise location labeling. To address these limitations, we propose a novel survey-free approach for radio map construction that relies solely on unlabeled Received Signal Strength (RSS) measurements, thereby obviating the need for manual site surveys or auxiliary Inertial Measurement Units (IMUs). The key idea involves embedding multiple unlabeled RSS sequences into a known indoor layout, specifically targeting corridor-guided environments with a dominant unidirectional pedestrian flow. However, aligning the embedded coordinates with the RSS collection locations remains challenging due to the random fluctuations inherent in RSS data. To tackle this, we introduce a Hidden Markov Model (HMM)- based Coarse-to-Fine Inference (HCFI) framework. At the coarse level, we employ an HMM-based region label inference algorithm to partition RSS sequences and align the RSS segments with specific physical regions using graph-based inference. At the fine level, we develop an HMM-based location label inference technique to estimate RSS collection coordinates by leveraging RSS propagation principles while incorporating sequential spatio-temporal mobility probability. Empirical results from an office environment demonstrate that the proposed method achieves a radio map construction Mean Absolute Error (MAE) of 8.96 dB. Furthermore, based on the estimated radio map, k-Nearest Neighbor (KNN) localization yields an average positioning error of approximately 3.33 meters, offering a highly viable, survey-free solution for radio map construction under sequential topological assumptions.

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