Sparsity based Radio Tomographic Imaging using Fused Lasso Regularization

Abhijit Mishra, U. K. Sahoo, S. Maiti
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引用次数: 6

Abstract

The increase in demand of detecting obstructions in a wireless medium without attaching any device with the target is well facilitated by the Radio Tomographic Imaging (RTI) system. Even though it is a promising technique it is a cumbersome task to get the exact position and shape of an object due to ill-posed nature of RTI system. Thus vital task is to effectively choose a regularization technique that not only enhances sparsity by reducing noise after detection but also preserves edges of the object with its appropriate shape by using a heuristic weight model. RTI facilitates us with an imaging vector indicating the loss fields created by obstacles in the medium having knowledge of received signal strength(RSS) values and a weight model that assigns weight to the attenuated pixels in a wireless network. This paper addresses the above-mentioned problem by using a fused lasso regularization via ADMM. The second part of the paper extends performance of fused lasso regularization by implementing it incrementally using distributed learning. The performance metrics shows that fused lasso regularization not only reduces the noise level by increasing the sparsity but also retains the sharp features of the object.
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基于稀疏度的融合Lasso正则化射电层析成像
无线层析成像(RTI)系统可以很好地促进无线介质中障碍物检测需求的增加,而无需在目标上附加任何设备。尽管这是一种很有前途的技术,但由于RTI系统的病态特性,获得物体的精确位置和形状是一项繁琐的任务。因此,重要的任务是有效地选择一种正则化技术,该技术既可以通过降低检测后的噪声来增强稀疏性,又可以使用启发式权值模型来保留目标的适当形状的边缘。RTI为我们提供了一个成像矢量,该矢量指示介质中障碍物产生的损失场,并具有接收信号强度(RSS)值的知识,以及一个权重模型,该模型将权重分配给无线网络中衰减的像素。本文采用基于ADMM的融合套索正则化方法解决了上述问题。论文的第二部分通过使用分布式学习增量实现融合套索正则化,扩展了融合套索正则化的性能。性能指标表明,融合套索正则化不仅通过增加稀疏度来降低噪声水平,而且保留了目标的清晰特征。
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