Joint spectral unmixing and clustering for identifying homogeneous regions in hyperspectral images

Eleftheria A. Mylona, O. Sykioti, K. Koutroumbas, A. Rontogiannis
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引用次数: 1

Abstract

In this paper a joint spectral unmixing and clustering approach for the identification of homogeneous regions in hyperspectral images is proposed. The endmembers required in the unmixing stage are manually selected based on the most significant principal components of the image at hand. Each pixel is decomposed as a linear combination of the endmembers and is represented by the vector of the coefficients of its corresponding linear combination. The clustering stage utilizes the complete-link hierarchical agglomerative clustering algorithm in a layer-wise fashion in order to retrieve the optimal clusters, based on the latter pixels representation. Experiments conducted on real images support the high-quality performance of the proposed approach.
高光谱图像中均匀区域的联合光谱解混与聚类识别
本文提出了一种用于高光谱图像中均匀区域识别的联合光谱分解和聚类方法。解混阶段所需的端元是根据手头图像中最重要的主成分手动选择的。每个像素被分解为端元的线性组合,并由其相应线性组合的系数向量表示。聚类阶段以分层方式利用完全链接分层聚类算法,以便根据后一种像素表示检索最佳聚类。在真实图像上进行的实验支持了该方法的高质量性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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