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通过小波变换支持的似然比方法对聚合物的傅里叶变换红外光谱和汽车漆的拉曼光谱进行解释,以降低数据维度。

Interpretation of FTIR spectra of polymers and Raman spectra of car paints by means of likelihood ratio approach supported by wavelet transform for reducing data dimensionality.

作者信息

Martyna Agnieszka, Michalska Aleksandra, Zadora Grzegorz

机构信息

Faculty of Chemistry, Department of Analytical Chemistry, Jagiellonian University in Krakow, Ingardena 3, 30-060, Krakow, Poland,

出版信息

Anal Bioanal Chem. 2015 May;407(12):3357-76. doi: 10.1007/s00216-015-8558-9. Epub 2015 Mar 11.

Abstract

The problem of interpretation of common provenance of the samples within the infrared spectra database of polypropylene samples from car body parts and plastic containers as well as Raman spectra databases of blue solid and metallic automotive paints was under investigation. The research involved statistical tools such as likelihood ratio (LR) approach for expressing the evidential value of observed similarities and differences in the recorded spectra. Since the LR models can be easily proposed for databases described by a few variables, research focused on the problem of spectra dimensionality reduction characterised by more than a thousand variables. The objective of the studies was to combine the chemometric tools easily dealing with multidimensionality with an LR approach. The final variables used for LR models' construction were derived from the discrete wavelet transform (DWT) as a data dimensionality reduction technique supported by methods for variance analysis and corresponded with chemical information, i.e. typical absorption bands for polypropylene and peaks associated with pigments present in the car paints. Univariate and multivariate LR models were proposed, aiming at obtaining more information about the chemical structure of the samples. Their performance was controlled by estimating the levels of false positive and false negative answers and using the empirical cross entropy approach. The results for most of the LR models were satisfactory and enabled solving the stated comparison problems. The results prove that the variables generated from DWT preserve signal characteristic, being a sparse representation of the original signal by keeping its shape and relevant chemical information.

摘要

对来自汽车车身部件和塑料容器的聚丙烯样品红外光谱数据库以及蓝色固体和金属汽车涂料拉曼光谱数据库中样品的共同来源解释问题进行了研究。该研究涉及统计工具,如似然比(LR)方法,用于表达在记录光谱中观察到的异同的证据价值。由于LR模型可以很容易地针对由几个变量描述的数据库提出,因此研究集中在以一千多个变量为特征的光谱降维问题上。研究的目的是将易于处理多维度的化学计量工具与LR方法相结合。用于构建LR模型的最终变量来自离散小波变换(DWT),作为一种数据降维技术,并得到方差分析方法的支持,且与化学信息相对应,即聚丙烯的典型吸收带和汽车涂料中存在的颜料相关峰。提出了单变量和多变量LR模型,旨在获得有关样品化学结构的更多信息。通过估计假阳性和假阴性答案的水平并使用经验交叉熵方法来控制它们的性能。大多数LR模型的结果令人满意,并能够解决所述的比较问题。结果证明,由DWT生成的变量保留了信号特征,通过保持其形状和相关化学信息,是原始信号的稀疏表示。

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