Probabilistic latent component analysis for radar signal detection

Tao Ying, Gaoming Huang, Cheng Zhou
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引用次数: 1

Abstract

The detection of radar signal submerged in noise has always been substantial for radar performance. An algorithm of radar signal detection based on probabilistic latent component analysis is proposed in this paper. By employing probabilistic latent component analysis, signal spectrogram is explicitly modeled as a mixture of marginal distribution products and noise is described by a dictionary of marginals. The estimation of the most appropriate marginal distributions is performed using Expectation-Maximization algorithm. The goal of signal detection is achieved by selective reconstruction method of extracting signal from noise. Simulation results demonstrate the effectiveness of the proposed algorithm and the improvement of signal detection over wavelet detection.
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雷达信号探测的概率潜分量分析
淹没在噪声中的雷达信号的检测一直是雷达性能的重要组成部分。提出了一种基于概率潜分量分析的雷达信号检测算法。利用概率潜分量分析,将信号谱图明确地建模为边际分布乘积的混合物,并用边际字典描述噪声。使用期望最大化算法估计最合适的边际分布。通过从噪声中提取信号的选择性重构方法来达到信号检测的目的。仿真结果证明了该算法的有效性,并且在信号检测方面比小波检测有所改进。
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