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Multifunction Radar Signal Environment Cognition Based Time-Frequency Analysis and Fuzzy SVM

机译:基于多功能雷达信号环境认知的时频分析和模糊支持向量机

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The paper presents the reasonable environment cognition model for multifunction radar based on time-frequency analysis and fuzzy Support Vector Machines (SVMs). Aim to extract the signal modulation characteristics corresponding to different multifunction radar task, the Smoothness Pseudo Wigner-Ville distribution and kernel principle component analysis are proposed to extract features of radar signals. Then, these discriminative and low dimensional features achieved are fed to the classifier which is designed based on fuzzy SVM. In simulation experiments, the proposed FVM classifier attains over 82% overall average correct classification rate for five classical multifunction radar signals. Experimental results show that the proposed methodology is efficient for complex multifunction radar signals detection and target environment cognition.
机译:提出了一种基于时频分析和模糊支持向量机的合理的多功能雷达环境认知模型。为了提取与不同多功能雷达任务相对应的信号调制特性,提出了平滑伪Wigner-Ville分布和核主成分分析,以提取雷达信号的特征。然后,将这些获得的区分性和低维特征馈送到基于模糊SVM设计的分类器。在仿真实验中,提出的FVM分类器对五个经典多功能雷达信号的总体平均正确分类率超过82%。实验结果表明,该方法对于复杂的多功能雷达信号检测和目标环境识别是有效的。

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