Incorporation of spatial and spectral contents in mixed-pixel decomposition of hyperspectral images

Fatemeh Kowkabi, H. Ghassemian, A. Keshavarz
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Abstract

Spectral unmixing is often involved two important steps. One is the identification of unique constituent elements of hyperspectral image known as Endmembers (EMs) and the other is their abundance fractions estimation. Accurate spectral unmixing has great impact on interpretation of unknown hyperspectral images. Many algorithms were developed to recognize EMs. Most of them are emphasized on exploitation of spectral information with lack of spatial contents support. Hence, several preprocessing modules (PPs) prior EM extraction stages were offered in order to incorporate both spatial and spectral contents. In this paper, we propose a novel preprocessing algorithm by recognizing spatial homogenous areas utilizing both unsupervised k-means clustering and a novel over-segmentation technique. Afterwards, areas with greater spectral purity degree are found thorough homogenous regions as the best EM candidates for the next EE stages. Respect to experimental results done on AVIRIS Cuprite scene, our scheme can improve reconstruction of original image and extract EMs more precisely near their USGS library signatures. Moreover, it provides a significant reduction in computation time of EM identification stage.
高光谱图像混合像元分解中空间与光谱内容的结合
光谱分解通常涉及两个重要步骤。一是识别高光谱图像中被称为端元的独特组成元素,二是估计它们的丰度分数。准确的光谱解混对未知高光谱图像的解译有很大的影响。人们开发了许多算法来识别em。它们大多侧重于光谱信息的开发,缺乏空间内容的支持。因此,为了结合空间和光谱内容,在EM提取阶段之前提供了几个预处理模块(PPs)。在本文中,我们提出了一种新的预处理算法,该算法利用无监督k均值聚类和一种新的过度分割技术来识别空间同质区域。然后,发现光谱纯度较高的区域是完全均匀的区域,是下一个EE阶段的最佳EM候选者。通过在AVIRIS Cuprite场景上的实验结果,我们的方案可以改善原始图像的重建,更精确地提取出USGS库签名附近的em。此外,它还大大减少了电磁识别阶段的计算时间。
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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