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Bird body and wing-beat radar Doppler signature separation using sparse optimization

机译:使用稀疏优化的鸟体和翼拍多普勒签名分离

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Radar bird detection and discrimination has many civilian and non-civilian applications such as collision avoidance, false alarm reduction for detection radars, stealthy target detection, classification of military unmanned aerial vehicles (UAVs) and civilian drones, and conservation ecology. In order to develop new and improve existing detection and discrimination algorithms, this paper proposes a feature extraction technique in which the wing-beat Doppler radar signature of a bird is separated from its respective body signature. More specifically, we propose non-linear morphological component analysis (MCA) using invertible short-time Fourier transform (STFT) for feature extraction. The method is applied to the Peregrine falcon data measured by Alabaster et al. (2012) resulting in successful separation of the aforementioned signatures.
机译:雷达鸟检测和歧视具有许多民用和非平民应用,如碰撞避税,检测雷达的假报警减少,隐身目标检测,军事无人机(无人机)和民用无人机的分类和保护生态。为了开发新的并改善现有的检测和鉴别算法,本文提出了一种特征提取技术,其中鸟的翼拍多普勒雷达签名与其各自的体签名分开。更具体地,我们使用可逆的短时傅里叶变换(STFT)提出了非线性形态分析(MCA),用于特征提取。该方法应用于Alabaster等人测量的Peregrine Falcon数据。 (2012)导致成功分离上述签名。

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