Graph-based semi-supervised hyperspectral image classification using spatial information

Nasehe Jamshidpour, Saeid Homayouni, A. Safari
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引用次数: 11

Abstract

Hyperspectral images classification has been one of the most popular research areas in remote sensing community in the past decades. However, there are still some difficulties that need specific attentions, such as the lack of enough labeled samples for training the classifier and the high dimensionality problem, which degrade the supervised classification performance dramatically. The main idea of semisupervised learning is to overcome the contribution of unlabeled samples, which are available in an enormous amount. In this paper, we propose a graph-based semisupervised classification method, using both spectral and spatial information. More specifically, two graphs are constructed and each one exploits the relationship among pixels in spectral and spatial spaces respectively. Then, the Laplacians of both constructed graphs are merged in order to form a weighted joint graph. The experimental results are carried out on Indian Pine AVIRIS image data. The efficiency and the excellent performance of the proposed method is clearly observed in comparison with well-known supervised classification methods, such as SVM, in both terms of accuracy and homogeneity of the produced classified maps.
基于图的空间信息半监督高光谱图像分类
高光谱图像分类是近几十年来遥感界研究的热点之一。然而,仍然有一些困难,需要具体的注意事项,如缺乏足够的标签样本训练分类器和高维度问题,大幅降低监督分类的性能。半监督学习的主要思想是克服大量可用的未标记样本的贡献。本文提出了一种利用光谱和空间信息的基于图的半监督分类方法。更具体地说,两个构造图和每一个利用了像素之间的关系分别在光谱和空间场所。然后,将两个构造图的拉普拉斯算子合并,形成一个加权联合图。实验结果在印度松木的AVIRIS图像数据上进行。在生成的分类图的准确性和均匀性方面,与众所周知的监督分类方法(如SVM)相比,可以清楚地观察到该方法的效率和优异的性能。
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