高光谱图像分类的共轭增强字典学习方法

Jihao Yin, Hui Qv, Xiaoyan Luo
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引用次数: 0

摘要

提出了一种基于稀疏自编码器(SAE)的共轭增广字典(CAD)学习方法用于高光谱图像分类。CAD源于将综合模型与分析模型相结合的意图。这两种模型用于获得像素的稀疏表示或特征。在本文中,CAD采用了三步学习字典和分类高光谱图像像素的策略。首先,我们采用稀疏自编码器模型来完成建议字典的学习过程。其次,利用学习到的字典重构测试样本;最后,我们将重建的像素嵌入到线性支持向量机中进行分类。利用印第安纳松子集进行分类实验,分类结果表明,重建的像元具有较高的分辨特征,这使得我们的方法作为对比优于其他高光谱图像分类算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A conjugated and augmented dictionary learning method for hyperspectral image classfication
A Conjugated and Augmented Dictionaries (CAD) learning method based on Sparse Auto-Encoder (SAE) is proposed for hyperspectral image classification. The CAD originates from the intention to combine the synthesis model and analysis model. These two models are used to obtain the sparse representation or feature of the pixels. In this paper, CAD has a three-step strategy to learn the dictionaries and classify the pixels of Hyperspectral image. Firstly, we adopt the Sparse Auto-Encoder model to complete the learning process of the suggested dictionaries. Secondly, test samples are reconstructed using the learned dictionaries. Finally, we embed the reconstructed pixels into a linear SVM for classification. Indiana Pine subset is used for the classification experiment, and the classification results show that the reconstructed pixels have the high discrimination characteristics, which makes our method outperforms other hyperspectral image classification algorithms as contrast.
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