首页> 外文期刊>International Journal of Pharmaceutics >A comparison of a common approach to partial least squares-discriminant analysis and classical least squares in hyperspectral imaging.
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A comparison of a common approach to partial least squares-discriminant analysis and classical least squares in hyperspectral imaging.

机译:比较高光谱成像中偏最小二乘判别分析和经典最小二乘的常见方法。

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摘要

In hyperspectral analysis, PLS-discriminant analysis (PLS-DA) is being increasingly used in conjunction with pure spectra where it is often referred to as PLS-Classification (PLS-Class). PLS-Class has been presented as a novel approach making it possible to obtain qualitative information about the distribution of the compounds in each pixel using little a priori knowledge about the image (only the pure spectrum of each compound is needed). In this short note it is shown that the PLS-Class model is the same as a straightforward classical least squares (CLS) model and it is highlighted that it is more appropriate to view this approach as CLS rather than PLS-DA. A real example illustrates the results of applying both PLS-Class and CLS.
机译:在高光谱分析中,越来越多地将PLS鉴别分析(PLS-DA)与纯光谱结合使用,在纯光谱中通常将其称为PLS分类(PLS-Class)。 PLS-Class已被提出为一种新颖的方法,它使得可以使用很少的图像先验知识(仅需要每个化合物的纯光谱)来获得有关每个像素中化合物分布的定性信息。在此简短说明中,我们可以看到PLS-Class模型与简单的经典最小二乘(CLS)模型相同,并且强调了将这种方法视为CLS而不是PLS-DA更合适。一个真实的例子说明了同时应用PLS级和CLS的结果。

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