A Statistically Motivated Likelihood for Track-Before-Detect

John Daniel Bossér, Gustaf Hendeby, M. L. Nordenvaad, I. Skog
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引用次数: 1

Abstract

A theoretically sound likelihood function for passive sonar surveillance using a hydrophone array is presented. The likelihood is derived from first order principles along with the assumption that the source signal can be approximated as white Gaussian noise within the considered frequency band. The resulting likelihood is a nonlinear function of the delay-and-sum beamformer response and signal-to-noise ratio (SNR).Evaluation of the proposed likelihood function is done by using it in a Bernoulli filter based track-before-detect (TkBD) framework. As a reference, the same TkBD framework, but with another beamforming response based likelihood, is used. Results from Monte-Carlo simulations of two bearings-only tracking scenarios are presented. The results show that the TkBD framework with the proposed likelihood yields an approx. 10 seconds faster target detection for a target at an SNR of -27 dB, and a lower bearing tracking error. Compared to a classical detect-and-track target tracker, the TkBD framework with the proposed likelihood yields 4 dB to 5 dB detection gain.
在检测之前跟踪的统计动机可能性
提出了一种利用水听器阵列进行被动声呐监视的理论上合理的似然函数。似然是从一阶原理推导出来的,同时假设源信号可以近似为在所考虑的频带内的高斯白噪声。得到的似然是波束形成器的延迟和响应和信噪比(SNR)的非线性函数。通过在基于伯努利滤波的检测前跟踪(TkBD)框架中对所提出的似然函数进行评估。作为参考,使用了相同的TkBD框架,但使用了另一种基于似然的波束形成响应。给出了两种纯方位跟踪场景的蒙特卡罗仿真结果。结果表明,具有所提出的似然的TkBD框架产生近似。对于信噪比为- 27db的目标,检测速度快10秒,且方位跟踪误差小。与传统的检测和跟踪目标跟踪器相比,具有提议似然的TkBD框架产生4 dB至5 dB的检测增益。
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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