High-resolution sensor array processing in the presence of multiple wideband chirp signals

A. Gershman, M. Amin, M. Pesavento
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引用次数: 4

Abstract

Estimating the parameters of polynomial-phase and chirp signals in sensor arrays is an important task which is frequently encountered in practical applications. Several authors have approached this problem using the narrow-band setting. In this paper, we present an optimal (maximum likelihood) algorithm for estimating the direction-of-arrival (DOA) and frequency parameters of multiple wideband constant-amplitude polynomial-phase signals. Since the proposed ML estimator is computationally intensive, an approximate solution is considered, originating from the analysis of the likelihood function in the single polynomial-phase signal case. As a result, the so-called polynomial-phase beamformer is obtained. Its simplified version referred to as the chirp beamformer is considered in detail. Explicit expressions for the corresponding Cramer-Rao bound (CRB) are presented as well. The performances of the exact ML algorithm and the chirp beamformer are compared to the CRB.
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存在多个宽带啁啾信号的高分辨率传感器阵列处理
传感器阵列中多项式相位和啁啾信号的参数估计是实际应用中经常遇到的一个重要问题。一些作者使用窄带设置来解决这个问题。本文提出了一种最优(最大似然)算法,用于估计多个宽带等幅多项式相位信号的到达方向(DOA)和频率参数。由于所提出的ML估计量计算量大,因此考虑了一个近似解,该近似解起源于对单多项式相位信号情况下的似然函数的分析。从而得到了所谓的多项式相位波束形成器。它的简化版本称为啁啾波束形成器被详细考虑。给出了相应Cramer-Rao界(CRB)的显式表达式。将精确ML算法和啁啾波束形成器的性能与CRB进行了比较。
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