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2DPCA-based Two-dimensional Maximum Interclass Distance Embedding for SAR ATR

机译:SAR ATR的基于2DPCA的二维最大嵌入距离嵌入

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Feature extraction from high-dimensional synthetic aperture radar (SAR) images is one of the crucial steps for SAR automatic target recognition (ATR). In this paper, we propose a new approach to SAR images feature extraction named Two-dimensional Principal Component Analysis-based Two-dimensional Maximum Interclass Distance Embedding (2DPCA-based 2DMIDE) which is based on manifold learning theory. The SAR image is projected into the feature space by horizontal 2DPCA and vertical 2DMIDE sequentially through this method. 2DPCA is efficient for image representation and preserves the global spatial structure of the original image, while 2DMIDE seeks to preserve the local spatial structure and the intrinsic geometry of the original image. Therefore, this feature extraction algorithm which fuses 2DPCA and 2DMIDE techniques can not only represent the original image in lower dimensions, but also excavate more powerful recognition information effectively. The experiment based on MSTAR database shows that the proposed method has a better recognition performance.
机译:来自高维合成孔径雷达(SAR)图像的特征提取是SAR自动目标识别(ATR)的关键步骤之一。在本文中,我们提出了一种新的SAR图像特征提取方法,其基于二维主成分分析的二维最大小区距离嵌入(基于2DPCA的2DMIDE),其基于歧管学习理论。 SAR图像通过该方法顺序地通过水平2dpca和垂直2dmide投射到特征空间中。 2DPCA对于图像表示有效,并保留原始图像的全局空间结构,而2DMIDE寻求保留原始图像的局部空间结构和内在几何形状。因此,该特征提取算法保留2DPCA和2DMIDE技术不能仅将原始图像置于较低的尺寸,而且还可以有效地挖掘更强大的识别信息。基于MSTAR数据库的实验表明,该方法具有更好的识别性能。

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