Cramer-Rao type bounds for sparsity-aware multi-target tracking in multi-static passive radar

Saurav Subedi, Yimin D. Zhang, M. Amin, B. Himed
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引用次数: 2

Abstract

Sparsity-aware multi-sensor multi-target tracking (MTT) algorithms comprise a two-step sequential architecture that cascades a group sparse reconstruction scheme and a multi-target tracker. The former exploits the a priori knowledge that the measurements across multiple sensors share a common sparse support in a discretized target state space and provides a computationally efficient approach for centralized fusion of the multi-sensor information. In the succeeding step, the multi-target tracker performs data association, compensates for the missed detections, and removes the clutter components, so as to improve the accuracy of multi-target state estimates. In many practical applications, the observation suffers from a high proportion of missing samples, rendering it difficult to accurately estimate the multi-target states using the group sparse reconstruction methods. Therefore, it is of significant interest to analyze the performance loss due to missing samples. In this paper, we analytically evaluate the Cramer-Rao type performance bounds for the sparsity-aware multi-sensor MTT algorithms in a multi-static passive radar system and evaluate the performance loss due to missing samples in the measurement vectors.
多静态无源雷达稀疏感知多目标跟踪的Cramer-Rao型边界
稀疏感知多传感器多目标跟踪(MTT)算法由一组稀疏重建方案和一个多目标跟踪器级联的两步顺序结构组成。前者利用了先验知识,即在离散化的目标状态空间中,多个传感器的测量值共享一个共同的稀疏支持,为多传感器信息的集中融合提供了一种计算效率高的方法。在接下来的步骤中,多目标跟踪器进行数据关联,补偿漏检,去除杂波分量,以提高多目标状态估计的精度。在许多实际应用中,观测结果存在较高比例的缺失样本,使得使用群稀疏重建方法难以准确估计多目标状态。因此,分析由于缺少样本而造成的性能损失是非常重要的。本文分析了多静态无源雷达系统中稀疏感知多传感器MTT算法的Cramer-Rao型性能边界,并评估了由于测量向量中缺失样本而导致的性能损失。
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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