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Kernel Joint Sparse Representation Based SAR Automatic Target Recognition

机译:基于核联合稀疏表示的SAR自动目标识别

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Synthetic aperture radar (SAR) automatic target recognition (ATR) is an important task in computer vision. This paper proposes a novel SAR ATR method based on kernel joint sparse representation. First, a monogenic feature extraction method is adopted to capture multiscale spatial and spectral properties of targets. Second, a kernel joint sparse representation classifier (KJSRC) is designed. In this KJSRC, to make the data linearly separable and more discriminative, we integrate the kernel principal component analysis and kernel Fisher discriminant analysis to produce an augmented pseudo-transformation matrix, which maps the features from the input space to a reproducing kernel Hilbert space. Third, different from single task learning, our method builds different linear regression models for each kernel-mapped monogenic feature. Through optimizing ℓ1/ℓq-norm regularization problem, the representation coefficients across multitask representation models are estimated. Finally, the query label is estimated according to total reconstruction error minimization rule from all tasks. Experimental results show that our method achieves high recognition accuracy for SAR ATR.
机译:合成孔径雷达(SAR)自动目标识别(ATR)是计算机视觉中的重要任务。提出了一种基于核联合稀疏表示的SAR ATR方法。首先,采用单基因特征提取方法来捕获目标的多尺度空间和光谱特性。其次,设计了核联合稀疏表示分类器(KJSRC)。在此KJSRC中,为了使数据线性可分离并且更具区分性,我们将内核主成分分析和内核Fisher Fisher判别分析进行集成,以生成增强的伪变换矩阵,该矩阵将特征从输入空间映射到再现的内核希尔伯特空间。第三,不同于单任务学习,我们的方法为每个内核映射的单基因特征建立了不同的线性回归模型。通过优化ℓ 1 /ℓ q -范数正则化问题,估计跨多任务表示模型的表示系数。最后,根据所有任务的总重构误差最小化规则估计查询标签。实验结果表明,该方法对SAR ATR具有较高的识别精度。

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