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基于张量局部判别嵌入的监督极化合成孔径雷达图像分类

Supervised Polarimetric SAR Image Classification Using Tensor Local Discriminant Embedding.

作者信息

Huang Xiayuan, Qiao Hong, Zhang Bo, Nie Xiangli

出版信息

IEEE Trans Image Process. 2018 Mar 14. doi: 10.1109/TIP.2018.2815759.

DOI:10.1109/TIP.2018.2815759
PMID:29993868
Abstract

Feature extraction is a very important step for polarimetric synthetic aperture radar (PolSAR) image classification. Many dimensionality reduction (DR) methods have been employed to extract features for supervised PolSAR image classification. However, these DR-based feature extraction methods only consider each single pixel independently and thus fail to take into account the spatial relationship of the neighboring pixels, so their performance may not be satisfactory. To address this issue, we introduce a novel tensor local discriminant embedding (TLDE) method for feature extraction for supervised PolSAR image classification. The proposed method combines the spatial and polarimetric information of each pixel by characterizing the pixel with the patch centered at this pixel. Then each pixel is represented as a third-order tensor, of which the first two modes indicate the spatial information of the patch (i.e. the row and the column of the patch) and the third mode denotes the polarimetric information of the patch. Based on the label information of samples and the redundance of the spatial and polarimetric information, a supervised tensor-based dimensionality reduction technique, called TLDE, is introduced to find three projections which project each pixel, that is, the third-order tensor into the low-dimensional feature. Finally, classification is completed based on the extracted features using the nearest neighbor (NN) classifier and the support vector machine (SVM) classifier. The proposed method is evaluated on two real PolSAR data sets and the simulated PolSAR data sets with various number of looks. The experimental results demonstrate that the proposed method not only improves the classification accuracy greatly, but also alleviates the influence of speckle noise on classification.

摘要

特征提取是极化合成孔径雷达(PolSAR)图像分类中非常重要的一步。许多降维(DR)方法已被用于提取监督式PolSAR图像分类的特征。然而,这些基于DR的特征提取方法仅独立地考虑每个单个像素,因此未能考虑相邻像素的空间关系,所以它们的性能可能并不令人满意。为了解决这个问题,我们引入了一种新颖的张量局部判别嵌入(TLDE)方法用于监督式PolSAR图像分类的特征提取。所提出的方法通过以该像素为中心的小块来表征像素,从而结合了每个像素的空间和极化信息。然后每个像素被表示为一个三阶张量,其中前两个模式表示小块的空间信息(即小块的行和列),第三个模式表示小块的极化信息。基于样本的标签信息以及空间和极化信息的冗余性,引入了一种基于监督张量的降维技术,称为TLDE,以找到三个投影,将每个像素(即三阶张量)投影到低维特征中。最后,使用最近邻(NN)分类器和支持向量机(SVM)分类器基于提取的特征完成分类。所提出的方法在两个真实的PolSAR数据集和具有不同视数的模拟PolSAR数据集上进行了评估。实验结果表明,所提出的方法不仅大大提高了分类精度,而且减轻了斑点噪声对分类的影响。

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