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Improved micro-Doppler features extraction using Smoothed-Pseudo Wigner-Ville Distribution

机译:使用平滑伪Wigner-Ville分布改进的微多普勒特征提取

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Time-frequency representations are commonly used to analyse time-varying spectral density of a time-varying signal. In particular, they can be used to extract features (e.g. blade length, number of blades and rotation rate of rotor) from micro-Doppler signals to provide means to differentiate between the different types of mini-UAV. This paper highlights the exploration of Smoothed-Pseudo Wigner-Viller Distribution (SPWVD) as compared to Short-Time Fourier Transform (STFT) to obtain better resolution in micro-Doppler features extraction via Singular Value Decomposition and Cepstral Analysis. Results have shown that with the proposed method of SPWVD Pre-Window whereby a window is applied to the raw signal before performing SPWVD, has resulted in better resolution in the estimation of blade length and the number of blade flash frequency components. The evaluation of the STFT and SPWVD Pre-Window have been conducted with real UAV data.
机译:时频表示法通常用于分析时变信号的时变频谱密度。特别地,它们可以用于从微多普勒信号中提取特征(例如,叶片长度,叶片数量和转子的旋转速率),以提供区分不同类型的微型UAV的手段。本文重点介绍了与短时傅立叶变换(STFT)相比的平滑伪Wigner-Viller分布(SPWVD)的探索,以通过奇异值分解和倒频谱分析在微多普勒特征提取中获得更好的分辨率。结果表明,通过提出的SPWVD预窗口方法,在执行SPWVD之前将窗口应用于原始信号,可以在估计叶片长度和叶片闪光频率分量的数量方面获得更好的分辨率。 STFT和SPWVD Pre-Window的评估已使用真实的无人机数据进行。

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