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Multilevel Distribution Coding Model-Based Dictionary Learning for PolSAR Image Classification

机译:基于多级分布编码模型的字典学习用于PolSAR图像分类

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摘要

This paper presents a new unsupervised classification method of polarimetric synthetic aperture radar (PolSAR) data based on dictionary learning. First, a multilevel distribution coding model is proposed to encode the probability distribution of the rearranged matrix of each pixel in a PolSAR image; this model can generate a stable and adaptive representation of the images, which can be used to extract better feature vectors of the PolSAR data using a new dictionary learning method. The proposed model can increase the separability of terrains and effectively discriminate one class of pixels from another. Then, the k-means clustering is used to perform initial classification of the PolSAR image, and the initial classification map defines training sets for classification based on the complex Wishart classifier. Finally, in order to improve the performance of classification, we use the maximum-likelihood (ML) classification based on complex Wishart distribution to refine the clustering result. Five PolSAR datasets, including the RADARSAT-2 C-band data of western Xi’an, China, are used in the experiments. Compared with the other two state-of-the-art methods, -Wishart and Lee category-preserving classification methods, the proposed one shows improvements in accuracy and efficiency, as well as high adaptability and better consistency.
机译:本文提出了一种基于字典学习的极化合成孔径雷达(PolSAR)数据无监督分类新方法。首先,提出一种多级分布编码模型,对PolSAR图像中每个像素的重排矩阵的概率分布进行编码。该模型可以生成图像的稳定且自适应的表示,可以使用新的字典学习方法来提取PolSAR数据的更好特征向量。提出的模型可以增加地形的可分离性,并有效地将一类像素与另一类像素区分开。然后,将k均值聚类用于执行PolSAR图像的初始分类,并且初始分类图基于复杂的Wishart分类器定义用于分类的训练集。最后,为了提高分类的性能,我们使用基于复杂Wishart分布的最大似然(ML)分类来细化聚类结果。实验中使用了五个PolSAR数据集,包括中国西安西部的RADARSAT-2 C波段数据。与另两种最先进的方法-Wishart和Lee保留类别的分类方法相比,所提出的方法显示出准确性和效率的提高,并且具有较高的适应性和更好的一致性。

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