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Joint sparse representation of monogenic components: With application to automatic target recognition in SAR imagery

机译:单基因成分的联合稀疏表示:应用于SAR图像中的自动目标识别

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In this paper, classification via joint sparse representation of the monogenic signal is presented for target recognition in SAR imagery. First, the monogenic signal is performed to capture the characteristics of SAR image. Since it is infeasible to directly apply the raw component to classification due to the high data dimension and redundancy, three augmented feature vectors are defined via uniform downampling of the real part, the imagery part, and the instantaneous phase. The monogenic features are then fed into a recently developed framework, sparse representation-based classification (SRC). Rather than produce individual sparse pattern, this paper generates the similar sparsity pattern for three feature vectors by imposing a mixed norm on the representation matrix. Extensive experiments on MSTAR database demonstrate that the proposed method could significantly improve the recognition accuracy.
机译:在本文中,提出了通过联合稀疏表示的单基因信号分类,以用于SAR图像中的目标识别。首先,执行单基因信号以捕获SAR图像的特征。由于高数据维度和冗余性,无法将原始组件直接应用于分类,因此,通过对真实部分,图像部分和瞬时相位进行统一下采样来定义三个增强的特征向量。然后将单基因特征输入到最近开发的框架中,即基于稀疏表示的分类(SRC)。通过在表示矩阵上施加混合范数,而不是生成单个的稀疏模式,本文为三个特征向量生成了类似的稀疏模式。在MSTAR数据库上进行的大量实验表明,该方法可以显着提高识别精度。

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