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SAR Target Configuration Recognition Using Tensor Global and Local Discriminant Embedding

机译:使用张量全局和局部判别嵌入的SAR目标配置识别

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摘要

This letter proposes a method that can preserve the global and local discriminative information based on the tensor representation to achieve feature extraction for synthetic aperture radar (SAR) target configuration recognition. We model SAR images of targets with different configurations as different manifolds, and each manifold is represented as a collection of maximal linear patches (MLPs), each depicted by a subspace. The manifold-to-manifold distance and subspace-to-subspace distance are used to maintain the global discriminative structure of data. Meanwhile, point-to-point distance (PPD) in an MLP is exploited to keep the local discriminative information of data. These two terms are then integrated to maintain the structure of data. Experimental results on the moving and stationary target automatic recognition (MSTAR) database demonstrate the effectiveness of the proposed method.
机译:这封信提出了一种方法,该方法可以基于张量表示保留全局和局部判别信息,从而实现合成孔径雷达(SAR)目标配置识别的特征提取。我们将具有不同配置的目标的SAR图像建模为不同的流形,每个流形表示为最大线性斑块(MLP)的集合,每个斑块由一个子空间表示。流形到歧管的距离和子空间到子空间的距离用于维护数据的全局判别结构。同时,利用MLP中的点对点距离(PPD)保留数据的本地区分性信息。然后将这两个术语集成在一起以维护数据的结构。在运动和静止目标自动识别(MSTAR)数据库上的实验结果证明了该方法的有效性。

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