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EMD-Based Entropy Features for micro-Doppler Mini-UAV Classification

机译:基于EMD的微多普勒Mini-UAV分类的熵特征

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In this paper, we first investigate into six popular entropies extracted from a set of intrinsic mode functions (IMFs) as a feature pattern for radar-based mini-size unmanned aerial vehicles (mini-UAV) classification. The six entropies include Shannon entropy, spectral entropy, log energy entropy, approximate entropy, fuzzy entropy and permutation entropy. Via an empirical comparison among the six entropies on real measurement radar data, the first three are selected as the representative due to their high efficiency and accuracy. To enhance the classification accuracy, the three selected entropies are then extracted from eight different sets of IMFs obtained by signal downsampling, and then fused at feature level. The nonlinear support vector machine classifier is adopted to predict the class label of unseen test radar signals. Our empirical results on a set of real-world continuous wave radar data show that the proposed method outperforms the state-of-the-art method in terms of the mini-UAV classification accuracy.
机译:在本文中,我们首先研究了从一组固有模式函数(IMF)中提取的六个流行熵,这些固有熵是基于雷达的微型无人飞行器(mini-UAV)分类的特征模式。六个熵包括香农熵,谱熵,对数能量熵,近似熵,模糊熵和置换熵。通过实测雷达数据上六个熵之间的经验比较,由于前三个熵的高效率和准确性而被选为代表。为了提高分类精度,然后从通过信号下采样获得的八组不同的IMF中提取三个选定的熵,然后在特征级别上对其进行融合。采用非线性支持向量机分类器预测看不见的测试雷达信号的类别标签。我们在一组现实世界连续波雷达数据上的经验结果表明,就微型无人机的分类精度而言,该方法优于最新方法。

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