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Exploring the Laplace Prior in Radio Tomographic Imaging with Sparse Bayesian Learning towards the Robustness to Multipath Fading

机译:使用稀疏贝叶斯学习探索多径衰落的鲁棒性以进行放射断层成像中的拉普拉斯先验

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摘要

Radio tomographic imaging (RTI) is a technology for target localization by using radio frequency (RF) sensors in a wireless network. The change of the attenuation field caused by the target is represented by a shadowing image, which is then used to estimate the target’s position. The shadowing image can be reconstructed from the variation of the received signal strength (RSS) in the wireless network. However, due to the interference from multi-path fading, not all the RSS variations are reliable. If the unreliable RSS variations are used for image reconstruction, some artifacts will appear in the shadowing image, which may cause the target’s position being wrongly estimated. Due to the sparse property of the shadowing image, sparse Bayesian learning (SBL) can be employed for signal reconstruction. Aiming at enhancing the robustness to multipath fading, this paper explores the Laplace prior to characterize the shadowing image under the framework of SBL. Bayesian modeling, Bayesian inference and the fast algorithm are presented to achieve the maximum-a-posterior (MAP) solution. Finally, imaging, localization and tracking experiments from three different scenarios are conducted to validate the robustness to multipath fading. Meanwhile, the improved computational efficiency of using Laplace prior is validated in the localization-time experiment as well.
机译:无线电层析成像(RTI)是一种通过在无线网络中使用射频(RF)传感器进行目标定位的技术。由目标引起的衰减场的变化由阴影图像表示,然后将其用于估计目标的位置。可以根据无线网络中接收信号强度(RSS)的变化来重建阴影图像。但是,由于来自多径衰落的干扰,并非所有的RSS变化都是可靠的。如果将不可靠的RSS变体用于图像重建,则阴影图像中会出现一些伪像,这可能会导致错误估计目标位置。由于阴影图像的稀疏特性,稀疏贝叶斯学习(SBL)可以用于信号重建。为了增强多径衰落的鲁棒性,本文探索了在SBL框架下表征阴影图像之前的Laplace。提出了贝叶斯建模,贝叶斯推理和快速算法来实现最大后验(MAP)解决方案。最后,进行了来自三种不同场景的成像,定位和跟踪实验,以验证对多径衰落的鲁棒性。同时,在定位时间实验中也验证了使用拉普拉斯先验的提高的计算效率。

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