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A Spectral Identity Mapper for Chemical Image Analysis

机译:用于化学图像分析的光谱身份映射器

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摘要

Generating chemically relevant image contrast from spectral image data requires multivariate processing algorithms that can categorize spectra according to shape. Conventional chemometric techniques like inverse least squares, classical least squares, multiple linear regression, principle component regression, and multivariate curve resolution are effective for predicting the chemical composition of samples having known constituents, but they are less effective when a priori information about the sample is unavailable. We have developed a multivariate technique called spectral identity mapping (SIM) that reduces the dependence of spectral image analysis on training datasets. The qualitative SIM method provides enhanced spectral shape specificity and improved chemical image contrast. We present SIM results of spectral image data acquired from polymer-coated paper substrates used in the manufacture of pressure sensitive adhesive tapes. In addition, we compare the SIM results to results from spectral angle mapping (SAM) and cosine correlation analysis (CCA), two closely related techniques.
机译:从光谱图像数据生成化学相关的图像对比度需要多元处理算法,该算法可以根据形状对光谱进行分类。常规化学计量学技术,例如最小二乘反方,经典最小二乘,多元线性回归,主成分回归和多元曲线分辨率,可有效预测具有已知成分的样品的化学组成,但当有关样品的先验信息为不可用。我们已经开发了一种称为光谱身份映射(SIM)的多元技术,可减少光谱图像分析对训练数据集的依赖性。定性SIM方法可增强光谱形状的特异性,并改善化学图像的对比度。我们介绍了从压敏胶带制造中使用的聚合物涂层纸基材获取的光谱图像数据的SIM结果。此外,我们将SIM的结果与光谱角映射(SAM)和余弦相关分析(CCA)这两种密切相关的技术的结果进行了比较。

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