Near-field localization using inverse filter criteria-based blind separation and cumulant matching

A. Govindaraju, Jitendra Tugnait
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引用次数: 2

Abstract

This paper is concerned with the problem of near-field source localization. The problem is tackled using the method of blind separation of independent signals (sources) from their linear instantaneous (memoryless) mixtures. The various signals are assumed to be zero-mean non-Gaussian but not necessarily linear or i.i.d. Approaches using higher-order cumulants are developed using the fourth-order normalized cumulants of the "beamformed" data. The instantaneous mixture matrix is obtained by cross-correlating the extracted inputs with the observed outputs. The first approach is source-extractive, i.e., the sources are extracted and cancelled one-by-one. The other approach is based upon cumulant matching of the estimated and model-based cumulants parametrized by the source parameters (range, bearing and cumulant). Illustrative simulation examples are provided.
基于逆滤波准则的盲分离和累积量匹配近场定位
本文研究了近场源定位问题。该问题的解决方法是将独立信号(源)从它们的线性瞬时(无记忆)混合物中盲分离出来。各种信号被假设为零均值非高斯,但不一定是线性或i.i.d。使用高阶累积量的方法是使用“波束形成”数据的四阶归一化累积量来开发的。通过将提取的输入与观测到的输出相互关联,得到瞬时混合矩阵。第一种方法是源提取,即逐个提取和取消源。另一种方法是根据源参数(距离、方位和累积量)参数化的估计累积量和基于模型的累积量进行累积量匹配。给出了说明性的仿真实例。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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