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Application of Wavelet Transform To Extract the Relevant Component from Spectral Data for Multivariate Calibration

机译:小波变换在光谱数据中提取相关分量的多元校正

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摘要

An approach aiming at extracting the relevant component for multivariate calibration is introduced, and its performance is compared with the "uninformative variable elimination" approach and with the standard PLS method for the modeling of near-infrared data. The extraction of the relevant component is carried out in the wavelet domain. The PLS results on these relevant features are better, and therefore, it seems that this approach can successfully be used to remove noise and irrelevant information from spectra for multivariate calibration.
机译:介绍了一种旨在提取用于多变量校准的相关分量的方法,并将其性能与“非信息变量消除”方法以及用于近红外数据建模的标准PLS方法进行了比较。相关分量的提取在小波域中进行。这些相关特征的PLS结果更好,因此,看来该方法可以成功地用于从光谱中去除噪声和无关信息,以进行多变量校准。

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