前向散射雷达微多普勒信号分析的CWT算法

K. Othman, N. E. Rashid, R. Abdullah, A. Alnaeb
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引用次数: 2

摘要

利用前向散射雷达(FSR)的微多普勒信号探测地面目标已成为近年来研究的热点。时间序列信号分析被认为是理解隐藏信息的一个重要领域,可以对这些信息进行评估以进行进一步处理。小波变换是一种众所周知的分析时域信号的方法,用于识别重要的特征以进行分类。介绍了用小波变换对FSR雷达网络进行时间序列信号分析的方法。所开发的算法在变换过程中使用CWT Morlet。用模拟摆的采样数据和实验控制数据信号验证了小波变换过程的性能。利用所开发的算法,可以检测到存在的微多普勒特征。通过初步测试,证明该算法是一种有潜力应用于特征识别的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CWT Algorithm for Forward-Scatter Radar Micro-Doppler Signals Analysis
The study on Forward Scatter Radar (FSR) Micro-Doppler signals for ground target detection has become a subject of attention recently. Time series signal analysis is considered as an important area explored in understanding hidden information that can be evaluated for further processing. Wavelet transformation is well known method used to analyze time domain signal for identification of important features for classification purposes. This paper describes time series signal analysis of FSR radar network using wavelet transformation. The developed algorithm use CWT Morlet in the transformation procedure. The wavelet performance in transformation process is verified using data sampled from a simulated pendulum and experimental controlled data signals. By using the developed algorithm, the presence Micro-Doppler signatures can be detected. Through preliminary testing the algorithm has proven to be a potential method in to be applied for feature identification.
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