基于特征值熵的微运动模式识别方法研究

Chuanzi Tang, Hongmei Ren, Wenjing Chen
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引用次数: 0

摘要

微运动目标回波包含电磁散射特性和运动特性,在目标识别中起着重要作用。进动周期是分析微动特性的重要特征之一。针对无进动目标的周期提取现象,本文提出了一种周期提取与特征值熵相结合的方法。通过建立自相关矩阵构造原始回波,通过特征值分解得到回波的特征值。然后计算特征值熵,提取周期。该方法可以消除一些进动不明显的目标,减小周期提取的误差,为最终目标类别的识别奠定了基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on the Micro-Motion Patterns Recognition Method Based on Characteristic Value Entropy
The echo of target with micro-motion contains the electromagnetic scattering characteristics and movement characteristics, which plays important roles in the target identification. Precession period is one of the important characteristics on the analysis of the micro-motion characteristics. Aimed at the phenomenon of extracting the cycle of no precession target, in the thesis a method is proposed by combing period extraction with eigenvalue entropy. The original echo is constructed by establishing autocorrelation matrix and the eigenvalues are obtained through eigenvalue decomposition. Then the period is extracted after calculating the eigenvalue entropy. The method can eliminates some targets with no obvious precession and minishes the error of period extraction, which lays the foundation for the recognition of the final target class.
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