拉曼光谱分析的稀疏正则化模型

Di Wu, Mehrdad Yaghoobi, Shaun Kelly, M. Davies, R. Clewes
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引用次数: 10

摘要

拉曼光谱长期以来一直是光谱学应用中常用的分析技术。拉曼光谱取决于分子散射入射光的效率(富含电子的分子通常会产生强信号),这就导致了将光谱与现有物质的绝对数量联系起来的困难。然而,光谱是测量样品的稳定和准确的表示,特别是考虑到每个分子都有一个独特的光谱。目前最先进的光谱校正方法包括主成分回归(PCR)和偏最小二乘回归(PLSR)方法,这两种方法已被证明是实现拉曼光谱定量分析的有效回归方法。本文考虑了拉曼光谱反褶积问题来分析样品成分,以及可能存在的未知物质。特别是,考虑到每个光谱的化学指纹主要由峰决定,我们提出了一个稀疏正则化模型,作为传统回归方法的补充,利用相对于整个化学库的成分稀疏性和光谱稀疏性。实验结果表明了该稀疏正则化模型的有效性。
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A sparse regularized model for Raman spectral analysis
Raman spectroscopy has for a long time performed as a common analytical technique in spectroscopic applications. A Raman spectrum depends upon how efficiently a molecule scatters the incident light (electron rich molecules often produce strong signals) which results in difficulties for relating the spectrum to the absolute amounts of present substances. The spectrum is however a stable and accurate representation of the sample measured especially considering that each molecule is associated with a unique spectrum. State-of-the-art spectroscopic calibration methods include the principal component regression (PCR) and partial least squares regression (PLSR) methods which have been proved to be efficient regression methods to realise the quantitative analysis of Raman spectrum. In this paper we consider the problem of Raman spectra deconvolution to analyse the sample composition, as well as possible unknown substances. In particular, we propose a sparse regularized model as a complement to traditional regression methods by leveraging the components sparsity compared to the whole chemical library and the spectra sparsity, given that the chemical fingerprint of each spectrum is mainly determined by the peaks. Experimental results illustrate the effectiveness of this sparse regularized model.
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