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IEICE Transactions on Fundamentals of Electronics, Communications and Computer Sciences
Online ISSN : 1745-1337
Print ISSN : 0916-8508
Regular Section
Incorporation of Faulty Prior Knowledge in Multi-Target Device-Free Localization
Dongping YUYan GUONing LIQiao SU
Author information
  • Dongping YU

    Graduate School, Army Engineering University of PLA

  • Yan GUO

    College of Communications Engineering, Army Engineering University of PLA

  • Ning LI

    College of Communications Engineering, Army Engineering University of PLA

  • Qiao SU

    Graduate School, Army Engineering University of PLA

Corresponding author

ORCID
Keywords:device-free localization,wireless sensor network,faulty prior knowledge,variational Bayesian inference
JOURNALRESTRICTED ACCESS

2019 Volume E102.AIssue 3Pages 608-612

DOIhttps://doi.org/10.1587/transfun.E102.A.608
Details
  • Published: March 01, 2019Manuscript Received: September 11, 2018Released on J-STAGE: March 01, 2019Accepted: -Advance online publication: -Manuscript Revised: November 18, 2018
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Abstract

As an emerging and promising technique, device-free localization (DFL) has drawn considerable attention in recent years. By exploiting the inherent spatial sparsity of target localization, the compressive sensing (CS) theory has been applied in DFL to reduce the number of measurements. In practical scenarios, a prior knowledge about target locations is usually available, which can be obtained by coarse localization or tracking techniques. Among existing CS-based DFL approaches, however, few works consider the utilization of prior knowledge. To make use of the prior knowledge that is partly or erroneous, this paper proposes a novel faulty prior knowledge aided multi-target device-free localization (FPK-DFL) method. It first incorporates the faulty prior knowledge into a three-layer hierarchical prior model. Then, it estimates location vector and learns model parameters under a variational Bayesian inference (VBI) framework. Simulation results show that the proposed method can improve the localization accuracy by taking advantage of the faulty prior knowledge.

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© 2019 The Institute of Electronics, Information and Communication Engineers
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