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首页> 外文期刊>Geoscience and Remote Sensing, IEEE Transactions on >Geometric Unmixing of Large Hyperspectral Images: A Barycentric Coordinate Approach
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Geometric Unmixing of Large Hyperspectral Images: A Barycentric Coordinate Approach

机译:大高光谱图像的几何混合:重心坐标方法

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摘要

In hyperspectral imaging, spectral unmixing is one of the most challenging and fundamental problems. It consists of breaking down the spectrum of a mixed pixel into a set of pure spectra, called endmembers, and their contributions, called abundances. Many endmember extraction techniques have been proposed in literature, based on either a statistical or a geometrical formulation. However, most, if not all, of these techniques for estimating abundances use a least-squares solution. In this paper, we show that abundances can be estimated using a geometric formulation. To this end, we express abundances with the barycentric coordinates in the simplex defined by endmembers. We propose to write them in terms of a ratio of volumes or a ratio of distances, which are quantities that are often computed to identify endmembers. This property allows us to easily incorporate abundance estimation within conventional endmember extraction techniques, without incurring additional computational complexity. We use this key property with various endmember extraction techniques, such as N-Findr, vertex component analysis, simplex growing algorithm, and iterated constrained endmembers. The relevance of the method is illustrated with experimental results on real hyperspectral images.
机译:在高光谱成像中,光谱分解是最具挑战性和最基本的问题之一。它包括将混合像素的光谱分解为一组纯光谱(称为端成员)及其贡献(称为丰度)。基于统计或几何公式,文献中已经提出了许多端基提取技术。但是,大多数(如果不是全部)估算丰度的技术都使用最小二乘解。在本文中,我们表明可以使用几何公式估算丰度。为此,我们用端成员定义的单纯形表示重心坐标。我们建议以体积比或距离比的形式来编写它们,而体积比或距离之比通常是用来确定端成员的数量。此属性使我们能够轻松地将丰度估算合并到常规端成员提取技术中,而不会引起额外的计算复杂性。我们将此关键属性与各种端成员提取技术结合使用,例如N-Findr,顶点成分分析,单纯形增长算法和迭代约束端成员。在真实的高光谱图像上的实验结果说明了该方法的相关性。

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