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Sparse Representation-Based SAR Image Target Classification on the 10-Class MSTAR Data Set

机译:10类MSTAR数据集上基于稀疏表示的SAR图像目标分类

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摘要

Recent years have witnessed an ever-mounting interest in the research of sparse representation. The framework, Sparse Representation-based Classification (SRC), has been widely applied as a classifier in numerous domains, among which Synthetic Aperture Radar (SAR) target recognition is really challenging because it still is an open problem to interpreting the SAR image. In this paper, SRC is utilized to classify a 10-class moving and stationary target acquisition and recognition (MSTAR) target, which is a standard SAR data set. Before the classification, the sizes of the images need to be normalized to maintain the useful information, target and shadow, and to suppress the speckle noise. Specifically, a preprocessing method is recommended to extract the feature vectors of the image, and the feature vectors of the test samples can be represented by the sparse linear combination of basis vectors generated by the feature vectors of the training samples. Then the sparse representation is solved by l 1 -norm minimization. Finally, the identities of the test samples are inferred by the reconstructive errors calculated through the sparse coefficient. Experimental results demonstrate the good performance of SRC. Additionally, the average recognition rate under different feature spaces and the recognition rate of each target are discussed.
机译:近年来,对稀疏表示的研究引起了越来越多的兴趣。基于稀疏表示的分类(SRC)框架已在许多领域中广泛用作分类器,其中合成孔径雷达(SAR)目标识别确实具有挑战性,因为它仍然是解释SAR图像的开放问题。在本文中,SRC用于对10类活动和固定目标获取与识别(MSTAR)目标进行分类,这是一个标准SAR数据集。在分类之前,需要对图像的大小进行归一化,以保持有用的信息,目标和阴影并抑制斑点噪声。具体地,推荐一种预处理方法来提取图像的特征向量,并且可以通过由训练样本的特征向量生成的基础向量的稀疏线性组合来表示测试样本的特征向量。然后通过l 1-范数最小化来解决稀疏表示。最后,通过稀疏系数计算出的重建误差可以推断出测试样品的身份。实验结果证明了SRC的良好性能。此外,讨论了不同特征空间下的平均识别率和每个目标的识别率。

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