主成分分析
线性判别分析
模式识别(心理学)
人工智能
多元统计
红外光谱学
近红外光谱
光谱学
概率逻辑
漫反射红外傅里叶变换
化学计量学
数据缩减
计算机科学
数学
化学
统计
光学
机器学习
物理
光催化
量子力学
催化作用
有机化学
生物化学
作者
Ashwini Kher,M. Mulholland,Brian Reedy,Philip Maynard
标识
DOI:10.1366/0003702011953199
摘要
Infrared (IR) spectra of different varieties of document papers were collected with the use of attenuated total reflectance (ATR, 4000-650 cm −1 , eight paper varieties) and diffuse reflectance (DRIFTS, 9000-2500 cm −1 , six paper varieties) techniques. The spectral data were classified by the application of soft independent modeling of class analogies (SIMCA), using principal components analysis (PCA) to estimate the distance of separation between the different classes of paper samples and discriminant analysis (DA) to obtain a probabilistic classification. The use of DA on spectral data needed a preliminary data reduction step, either by PCA-decomposition of spectra or the selection of discrete spectral features having maximum discriminating ability. The aim of this research was to evaluate these data-reduction techniques and compare the discriminating power of these two spectral techniques (DRIFTS and ATR) by the application of PCA and DA. The use of PCA scores as DA variables provided the best resolution (100% correct classification) for the DRIFTS spectra, while PCA on the ATR spectra resulted in the best discrimination, separating 67.86% paper pairs completely with the use of cross-validation. The results of this study reemphasize that infrared spectroscopy coupled with multivariate statistical methods of analysis could provide a powerful discriminating tool for the forensic questioned document examiner.
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