论文标题

迭代性稀疏恢复基于可感知移动网络中的被动本地化

Iterative Sparse Recovery based Passive Localization in Perceptive Mobile Networks

论文作者

Xie, Lei, Song, Shenghui

论文摘要

提出了感知性移动网络(PMN),以将传感能力集成到当前的蜂窝网络中,其中多个感应节点(SNS)可以协作地感知相同的目标。除了传统的雷达系统中的主动感测外,基于移动用户设备的上行链路通信信号的被动传感可能在PMN中起更重要的作用,尤其是对于电磁波反射较弱的目标,例如行人。但是,如果没有正确设计的主动传感波形,则被动传感通常会遭受低信号与噪声功率比(SNR)的影响。结果,大多数现有的方法都需要大量数据示例,以实现接收信号的协方差矩阵的准确估计,该矩阵是基于用于本地化目的的功率谱的。这样的要求将为PMN创造大量的通信工作负载,因为需要通过网络传输数据样本才能进行协作感应。为了解决这个问题,在本文中,我们利用本地化问题的稀疏结构来减少搜索空间,并提出一种迭代性稀疏恢复(ISR)算法,该算法以迭代方式估算协方差矩阵和功率谱。实验结果表明,对于低SNR制度中的样本很少,ISR算法可以取得比现有方法更好的本地化性能。

Perceptive mobile networks (PMNs) were proposed to integrate sensing capability into current cellular networks where multiple sensing nodes (SNs) can collaboratively sense the same targets. Besides the active sensing in traditional radar systems, passive sensing based on the uplink communication signals from mobile user equipment may play a more important role in PMNs, especially for targets with weak electromagnetic wave reflection, e.g., pedestrians. However, without the properly designed active sensing waveform, passive sensing normally suffers from low signal to noise power ratio (SNR). As a result, most existing methods require a large number of data samples to achieve an accurate estimate of the covariance matrix for the received signals, based on which a power spectrum is constructed for localization purposes. Such a requirement will create heavy communication workload for PMNs because the data samples need to be transferred over the network for collaborative sensing. To tackle this issue, in this paper we leverage the sparse structure of the localization problem to reduce the searching space and propose an iterative sparse recovery (ISR) algorithm that estimates the covariance matrix and the power spectrum in an iterative manner. Experiment results show that, with very few samples in the low SNR regime, the ISR algorithm can achieve much better localization performance than existing methods.

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