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首页> 外文期刊>AEU: Archiv fur Elektronik und Ubertragungstechnik: Electronic and Communication >Automatic classification of radar targets with micro-motions using entropy segmentation and time-frequency features
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Automatic classification of radar targets with micro-motions using entropy segmentation and time-frequency features

机译:利用熵分割和时频特征对具有微动的雷达目标进行自动分类

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摘要

Micro-Doppler (mD) signatures have great potential in the radar micro-dynamic target classification. An automatic classification method for radar targets with micro-motions is proposed based on the idea of entropy and feature extraction from the spectrogram. In this method, the measurement of entropy is firstly conducted over the time-frequency distribution associated with the minimum filtering operation, the threshold discrimination and the region focusing to obtain the region of interest corresponding to mD signatures in the original spectrogram. It helps acquire the valid region in the time-frequency domain and reduce the computational burden in the following processing. Next, invariant moments and geometric characteristics of time-frequency distribution of mD signatures are extracted from the segmented spectrogram to construct mD feature vectors. A support vector machine (SVM) with decision-tree architecture is then used for multiclass micro-dynamic target classification from radar echoes. Finally, some experimental tests with simulated mD data are carried out to confirm the effectiveness of the proposed method and evaluate the performance under different conditions of signal-to-noise ratio (SNR), training set and feature vector. In addition, issues related to the improvement of classification performance are also discussed.
机译:微多普勒(mD)签名在雷达微动态目标分类中具有巨大潜力。提出了一种基于熵和频谱图特征提取思想的微运动雷达目标自动分类方法。在这种方法中,首先在与最小滤波操作,阈值判别和区域聚焦相关的时频分布上进行熵的测量,以获得与原始频谱图中的mD签名相对应的感兴趣区域。它有助于获取时频域中的有效区域,并减少后续处理中的计算负担。接下来,从分割的频谱图中提取mD签名的时矩分布的不变矩和几何特征,以构建mD特征向量。然后,将具有决策树架构的支持向量机(SVM)用于雷达回波的多类微动态目标分类。最后,利用模拟的mD数据进行了一些实验测试,以验证该方法的有效性并评估在不同信噪比(SNR),训练集和特征向量条件下的性能。此外,还讨论了与提高分类性能有关的问题。

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