Some Unmixing Problems and Algorithms in Spectroscopy and Hyperspectral Imaging

M. Berman
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引用次数: 8

Abstract

The automated identification and mapping of the constituent materials in a hyperspectral image is a problem of considerable interest. A significant issue is that the spectra at many pixels in such an image are actually mixtures of the spectra of the pure constituents. I review methods of "unmixing" spectra into their pure constituents, both when a "spectral library" of the pure constituents is available, and where no such library is available. Our own algorithms in both these areas are exemplified with a mineral and a biological example.
光谱学和高光谱成像中的若干解混问题及算法
高光谱图像中组成物质的自动识别和映射是一个相当有趣的问题。一个重要的问题是,在这样的图像中,许多像素的光谱实际上是纯成分光谱的混合物。我回顾了将光谱“分解”成纯成分的方法,当纯成分的“光谱库”可用时,以及没有这样的库可用时。我们在这两个领域的算法都以矿物和生物为例。
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