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首页> 外文期刊>IEEE sensors journal >Classification of UAV-to-Ground Targets Based on Enhanced Micro-Doppler Features Extracted via PCA and Compressed Sensing
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Classification of UAV-to-Ground Targets Based on Enhanced Micro-Doppler Features Extracted via PCA and Compressed Sensing

机译:基于通过PCA提取的增强微多普勒特征的UAV到地面目标分类和压缩感

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摘要

In order to achieve precise operations on specified targets from the unmanned aerial vehicles (UAVs), classifying ground targets correctly is especially important. Micro-Doppler effect which provides unique information of targets has been the basis for targets classification. Due to the effect of ground clutter, noise and complex signal modulation, enhancing micro-Doppler features of UAV-to-ground targets is necessary for accurate classification. This paper firstly establishes the models of UAV-to-ground targets including wheeled vehicles, tracked vehicles and pedestrians to analyze their micro-Doppler differences. Secondly, Principal Components Analysis (PCA) is utilized to remove the ground clutter. Compared with other algorithms, PCA can use a small amount of calculation to remove the ground clutter while retain nearby micro-Doppler signals. Then, micro-Doppler signals are sparsely represented based on Fourier basis. Orthogonal Matching Pursuit (OMP) is chosen to reconstruct micro-Doppler components and refine spectral lines after random projection. The three steps make up Compressed Sensing (CS) together. At last, non-linear transform of Doppler spectrum is conducted to further enhance the distinction of micro-Doppler spectral lines. Distinguishing micro-Doppler features are extracted from pre-processed micro-Doppler signals, which eventually contributes to the accurate targets classification. Comparison with other methods is also made to prove the robustness and anti-noise performance of proposed method.
机译:为了实现从无人驾驶飞行器(无人机)的指定目标上的精确操作,正确分类地面目标尤为重要。提供目标独特信息的微多普勒效应是目标分类的基础。由于地面杂波,噪声和复杂信号调制的影响,需要提高无人机对地目标的微多普勒特征,以准确分类。本文首先建立了包括轮式车辆,跟踪车辆和行人的无人机地下目标的模型,以分析其微多普勒差异。其次,使用主成分分析(PCA)来除去地面杂波。与其他算法相比,PCA可以使用少量计算来除去地面杂乱,同时保留附近的微多普勒信号。然后,基于傅立叶基础,微多普勒信号稀疏地表示。选择正交匹配追求(OMP)以在随机投影后重建微多普勒组件和细化谱线。三个步骤将压缩感(CS)组成在一起。最后,进行多普勒频谱的非线性变换,以进一步增强微多普勒光谱线的区别。区分微多普勒特征是从预处理的微多普勒信号中提取的,最终有助于准确的目标分类。还可以使其他方法的比较来证明所提出的方法的鲁棒性和抗噪声性能。

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