Machine Learning-Aided Nonhomogeneity Detection Method for Airborne Radar

Zeyu Wang;Hongmeng Chen;Shuwen Xu;Ming Li
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Abstract

The weight vector in space-time adaptive processing (STAP) algorithm will lead to notches at the position of the interfering targets when there are interfering targets in the training data. If these interfering targets are close to the target of interest on the space-time spectrum, the target signal self-nulling occurs. To deal with this problem, a machine learning-aided nonhomogeneity detection (ML-NHD) method is proposed. More specifically, the subaperture smoothing technique is first performed on each training data to obtain the subaperture sample covariance matrices (SCMs). We prove that when the airborne radar works in side-looking mode and the clutter foldover factor is an integer, the numbers of large eigenvalues (EIGs) of the subaperture SCMs are different for the ordinary training data samples and outlier training data samples. Then, four features are constructed based on the differences in the characteristics of EIGs and eigenvectors of the subaperture SCMs. Finally, a binary classifier based on support vector machine (SVM) is trained to classify the ordinary training data and the outlier training data. The performance assessment shows that the ML-NHD method can detect the outlier training data effectively and achieves better performance of clutter suppression compared with the conventional methods.
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基于机器学习的机载雷达非均匀性检测方法
当训练数据中存在干扰目标时,空时自适应处理(STAP)算法中的权向量会在干扰目标的位置产生凹痕。如果这些干扰目标在空时频谱上接近目标,目标信号就会发生自零化。为了解决这一问题,提出了一种机器学习辅助非均匀性检测(ML-NHD)方法。具体来说,首先对每个训练数据进行子孔径平滑技术,得到子孔径样本协方差矩阵(SCMs)。证明了当机载雷达工作在侧视模式下,杂波折叠系数为整数时,普通训练数据样本和离群训练数据样本的子孔径scm的大特征值(eg)个数不同。在此基础上,基于子孔径尺度尺度的特征向量和特征向量的差异,构建了4个特征。最后,训练基于支持向量机的二值分类器,对普通训练数据和离群训练数据进行分类。性能评估表明,与传统方法相比,ML-NHD方法可以有效地检测出异常训练数据,并取得了更好的杂波抑制性能。
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