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Unsupervised Hyperspectral Imagery Classification via Sparse Multi-way Models and Image Fusion

机译:通过稀疏多向模型和图像融合进行无监督的高光谱图像分类

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Inspired by the recent rapid progress of l_1-norm minimization techniques and the great success of sparse dictionary learning in image modeling, this paper proposes a sparse multi-way models clustering fusion technique to improve the classification performance in hyperspectral imagery. Multi-way models consider hyperspectral imagery data as a whole entity to treat jointly spatial and spectral modes. The whole clustering fusion method is composed three steps. Firstly, the complete hyperspectral data is grouped into several independent sub-band data sources. Then, sparse multi-way model is used to feature extraction in every band set, and divide the scene into a series of homomorphic regions. At last, we propose a fusion method to combine the information provided by each band set, it can acquire approximate supervised classification performance (such as K-nearest Neighbor classifier).The experimental results on the HYD1CE imagery demonstrate the efficiency and superiority of the proposed clustering method to the classical K-means clustering method.
机译:受到最近l_1-范数最小化技术的快速发展以及稀疏字典学习在图像建模中的巨大成功的启发,本文提出了一种稀疏的多方向模型聚类融合技术,以提高高光谱图像的分类性能。多向模型将高光谱图像数据视为一个整体,以共同处理空间和光谱模式。整个聚类融合方法包括三个步骤。首先,将完整的高光谱数据分组为几个独立的子带数据源。然后,使用稀疏多向模型对每个波段集进行特征提取,并将场景划分为一系列同构区域。最后,我们提出了一种融合方法,将各个波段集提供的信息进行融合,可以获得近似的监督分类性能(例如K近邻分类器)。HYD1CE图像的实验结果证明了该方法的有效性和优越性。聚类方法改为经典的K均值聚类方法。

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