Abstract

As an emerging and promising technique, device-free localization (DFL) estimates target positions by analyzing their shadowing effects. Most existing compressive sensing (CS)-based DFL methods use the changes of received signal strength (RSS) to approximate the shadowing effects. However, in changing environments, RSS readings are vulnerable to environmental dynamics. The deviation between runtime RSS variations and the data in a fixed dictionary can significantly deteriorate the performance of DFL. In this paper, we introduce ComDec, a novel CS-based DFL method using channel state information (CSI) to enhance localization accuracy and robustness. To exploit the channel diversity of CSI measurements, the DFL problem is formulated as a joint sparse recovery problem that recovers multiple sparse vectors with common support. To solve this problem, we develop a joint sparse recovery algorithm under the variational Bayesian inference framework. In this algorithm, dictionaries are parameterized based on the saddle surface model. To adapt to the environmental changes and different channel characteristics, dictionary parameters are modelled as tunable parameters. Simulation results verified the superior performance of ComDec as compared with other state-of-the-art CS-based DFL methods.

Highlights

  • As a main piece of the context information, location information is essential for the location-based services (LBS) in many context-aware applications

  • As the ComDec and DR-device-free localization (DFL) have countermeasures to mitigate the dictionary mismatches introduced by environmental dynamics, their Avg.Error decrease dramatically when signal-to-noise ratio (SNR)

  • A novel multi-channel compressive sensing (CS)-based DFL method, ComDec is proposed. It can solve the dictionary mismatch problem caused by environmental dynamics in changing environments

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Summary

Introduction

As a main piece of the context information, location information is essential for the location-based services (LBS) (all the used abbreviations are explained at the end of the article) in many context-aware applications. It can enhance the accuracy and robustness of the CS-based DFL in changing environments. To enhance the localization accuracy and robustness of CS-based DFL, a novel ComDec method is proposed, which leverages the channel diversity of CSI measurements. DFL problem is extended to multi-channel scenario It is formulated as a joint sparse recovery problem that recovers multiple jointly sparse vectors over two known dictionaries. To mitigate the influence of environmental dynamics in changing environments, the dictionary parameters with respect to multiple channels are modelled as tunable parameters to adapt the environmental changes and different channel characteristics In this way, the dictionary mismatch problem can be solved without the need of explicitly estimating the dictionary parameters.

Related Work
Overview of Multi-Target Device-Free Localization
CSI Collection and Feature Extraction
Problem Formulation
Target Localization via Variational Bayesian Inference
Hierarchical Prior Model
Variational Bayesian Inference
Joint Sparse Reconstruction
Target Counting and Localization
Simulation Setup
Impact of the Number of Channels
Effectiveness of ComDec in Changing Environments
Conclusions and Future Work
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