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An Improved Compressive Sensing and Received Signal Strength-Based Target Localization Algorithm with Unknown Target Population for Wireless Local Area Networks

机译:目标局域网未知的基于压缩感知和接收信号强度的改进目标定位算法

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In this paper a two-phase compressive sensing (CS) and received signal strength (RSS)-based target localization approach is proposed to improve position accuracy by dealing with the unknown target population and the effect of grid dimensions on position error. In the coarse localization phase, by formulating target localization as a sparse signal recovery problem, grids with recovery vector components greater than a threshold are chosen as the candidate target grids. In the fine localization phase, by partitioning each candidate grid, the target position in a grid is iteratively refined by using the minimum residual error rule and the least-squares technique. When all the candidate target grids are iteratively partitioned and the measurement matrix is updated, the recovery vector is re-estimated. Threshold-based detection is employed again to determine the target grids and hence the target population. As a consequence, both the target population and the position estimation accuracy can be significantly improved. Simulation results demonstrate that the proposed approach achieves the best accuracy among all the algorithms compared.
机译:本文提出了一种基于两阶段压缩感知和接收信号强度的目标定位方法,以通过处理未知目标种群以及网格尺寸对位置误差的影响来提高位置精度。在粗略定位阶段,通过将目标定位公式化为稀疏信号恢复问题,将恢复矢量分量大于阈值的栅格选择为候选目标栅格。在精细定位阶段,通过划分每个候选网格,可以使用最小残留误差规则和最小二乘技术迭代地优化网格中的目标位置。对所有候选目标网格进行迭代分区并更新测量矩阵时,将重新估算恢复矢量。再次使用基于阈值的检测来确定目标网格,从而确定目标总体。结果,目标人群和位置估计精度都可以显着提高。仿真结果表明,所提出的方法在所有算法中均达到了最佳精度。

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