Enhancing Endmember Extraction using K-means clustering and Pixel Purity Index

S. Kalaivani, M.R. Vimaladevi
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引用次数: 0

Abstract

Hyperspectral images are of hundreds of bands and contain abundant information. The mixing of pixels in spatial domain makes differentiation of materials a critical task in hyperspectral images. The different materials are classified as endmembers and their area covered known as abundance maps. The existing unmixing techniques are dependent on random initialization of endmember locations and processed on full band data. This paper proposes a k-means clustering based purity index value on principal components to select the endmember candidates for initialization. The proposed strategy is tested on more efficient Vertex Component Analysis and NFINDR endmember extraction algorithms. The proposed strategy evaluated on Jasper Ridge and Urban dataset. The results were analyzed using root mean square error.
利用k均值聚类和像素纯度指数增强端元提取
高光谱图像包含数百个波段,包含丰富的信息。在高光谱图像中,像素在空间域中的混合使得材料的区分成为一项关键任务。不同的物质被分类为端元,它们所覆盖的面积被称为丰度图。现有的解混技术依赖于端元位置的随机初始化,并在全波段数据上进行处理。本文提出了一种基于k均值聚类的主成分纯度指标值来选择初始化的端元候选者。在更高效的顶点分量分析和NFINDR端元提取算法上对该策略进行了测试。在Jasper Ridge和Urban数据集上对提出的策略进行了评估。结果采用均方根误差进行分析。
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