Radio Tomographic Imaging with Feedback-Based Sparse Bayesian Learning

Zhen Wang, Hang Su, Xuemei Guo, Guoli Wang
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引用次数: 7

Abstract

Radio tomographic imaging (RTI) provides an efficient method to realize device-free localization (DFL) which does not require the target to carry any tags or electronic devices. By the measurement of received signal strength (RSS) between node pairs in a wireless sensor network, the attenuation image caused by the target can be reconstructed. Subsequently, the target location can be extracted from the attenuation image. Sparse Bayesian learning (SBL) can be employed for reconstruction because of the sparseness of the attenuation image. However, the fast SBL degrades in reconstruction performances due to the inaccurate estimation on the noise hyper-parameters. To address this, this paper exploits a feedback-based fast SBL framework both for homogeneous-noise and heterogeneous-noise cases. Theoretical modeling and Bayesian inference procedure are given for this feedback-based framework. Finally, RTI experimental results from three different scenarios demonstrate the effectiveness of the proposed scheme.
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基于反馈稀疏贝叶斯学习的射电层析成像
射频层析成像(RTI)提供了一种有效的方法来实现无设备定位(DFL),它不需要目标携带任何标签或电子设备。通过测量无线传感器网络中节点对之间的接收信号强度(RSS),可以重建目标引起的衰减图像。随后,从衰减图像中提取目标位置。然而,由于对噪声超参数估计不准确,快速SBL重构性能下降。为了解决这个问题,本文利用了一个基于反馈的快速SBL框架,用于均匀噪声和非均匀噪声情况。给出了该反馈框架的理论建模和贝叶斯推理过程。最后,三种不同场景下的RTI实验结果验证了该方案的有效性。
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