Enhanced Direct Position Determination of Multiple Sources Based on 1-bit Sparse Bayesian Learning

  • Qiuping Wang
  • , Qing Liu
  • , Jian Xie
  • , Yifeng He

Research output: Contribution to journalArticlepeer-review

Abstract

The conventional direct position determination (DPD) algorithms impose significant communication overhead since the raw signals are required to be transmitted from all sensor stations to a central processor. To address this challenge, we propose a communication-efficient approach for multisource localization, named OBSBL-DPD, which integrates 1-bit quantized measurements with sparse Bayesian learning (SBL). The utilization of 1-bit quantization reduces the communication load between the central processor and distributed stations, while SBL improves the localization accuracy by exploiting signal sparsity. In contrast to existing ℓ1-penalty-based DPD approaches, the proposed framework employs SBL to solve the localization problems with partially unknown dictionaries in a sparsity-driven way. Moreover, the traditional single-snapshot model is extended to support multi-snapshot scenarios, which can further enhance robustness in practical applications. Additionally, we introduce an alternating minimization strategy to improve the convergence of the proposed algorithm. The simulation results demonstrate that the proposed OBSBL-DPD method exhibits superior localization accuracy and reduced computational complexity compared to conventional DPD approaches.

Original languageEnglish
Pages (from-to)38371-38382
Number of pages12
JournalIEEE Sensors Journal
Volume25
Issue number20
DOIs
StatePublished - 2025

Keywords

  • 1-bit quantization
  • alternating minimization strategy
  • direct position determination (DPD)
  • sparse Bayesian learning (SBL)
  • sparsity-based localization model

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