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Target Recognition in SAR Image by Joint Classification of Target Region and Shadow

机译:目标地区和阴影的联合分类在SAR图像中的目标识别

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Background: A synthetic aperture radar (SAR) automatic target recognition (ATR) method is proposed in this paper via the joint classification of the target region and shadow. Methods: The elliptical Fourier descriptors (EFDs) are used to describe the target region and shadow extracted from the original SAR image. In addition, the relative positions between the target region and shadow are represented by a constructed feature vector. The three feature vectors complement each other to provide more comprehensive descriptions of the target's physical properties, e.g., sizes and shape. In the classification stage, the three feature vectors are jointly classified based on the joint sparse representation (JSR). JSR is a multi-task learning algorithm, which can not only represent each component properly but also exploit the inner correlations of different components. Finally, the target type is determined to the class with the minimum reconstruction error. Results: Experiments have been conducted on the Moving and Stationary Target Acquisition and Recognition (MSTAR) dataset. The proposed method achieves a high recognition accuracy of 96.86% for 10-class recognition problem under the standard operating condition (SOC). Moreover, robustness of the proposed method is also superior over the reference methods under the extended operating conditions (EOCs) like configuration variance, depression angle variance, and noise corruption. Conclusion: Therefore, the effectiveness and robustness of the proposed method can be quantitatively demonstrated by the experimental results.
机译:背景:通过目标区域和阴影的联合分类,本文提出了一种合成孔径雷达(SAR)自动目标识别(ATR)方法。方法:椭圆傅里叶描述符(EFDS)用于描述从原始SAR图像中提取的目标区域和阴影。另外,目标区域和阴影之间的相对位置由构造的特征向量表示。三个特征向量彼此相互补充,以提供目标物理性质的更全面的描述,例如,尺寸和形状。在分类阶段,三个特征向量基于关节稀疏表示(JSR)共同分类。 JSR是一种多任务学习算法,它不仅可以正确代表每个组件,还可以利用不同组件的内部相关性。最后,将目标类型确定为具有最小重建误差的类。结果:在移动和静止目标采集和识别(MSTAR)数据集上进行了实验。在标准操作条件(SOC)下,该方法在10级识别问题上实现了96.86%的高识别准确度。此外,所提出的方法的鲁棒性在延长的操作条件(EOC)如配置方差,凹陷角度方差和噪声损坏中也在参考方法上优于参考方法。结论:可以通过实验结果定量证明所提出的方法的有效性和稳健性。

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