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Spectral encoder to extract the efficient features of Raman spectra for reliable and precise quantitative analysis
Gao, Chi1,2,3; Fan, Qi1,2; Zhao, Peng1,2,3; Sun, Chao1,2; Dang, Ruochen1,2,3; Feng, Yutao1; Hu, Bingliang1,2; Wang, Quan1,2
作者部门光谱成像技术研究室
2024-05-05
发表期刊Spectrochimica Acta - Part A: Molecular and Biomolecular Spectroscopy
ISSN13861425
卷号312
产权排序1
摘要

Raman spectroscopy has become a powerful analytical tool highly demanded in many applications such as microorganism sample analysis, food quality control, environmental science, and pharmaceutical analysis, owing to its non-invasiveness, simplicity, rapidity and ease of use. Among them, quantitative research using Raman spectroscopy is a crucial application field of spectral analysis. However, the entire process of quantitative modeling largely relies on the extraction of effective spectral features, particularly for measurements on complex samples or in environments with poor spectral signal quality. In this paper, we propose a method of utilizing a spectral encoder to extract effective spectral features, which can significantly enhance the reliability and precision of quantitative analysis. We built a latent encoded feature regression model; in the process of utilizing the autoencoder for reconstructing the spectrometer output, the latent feature obtained from the intermediate bottleneck layer is extracted. Then, these latent features are fed into a deep regression model for component concentration prediction. Through detailed ablation and comparative experiments, our proposed model demonstrates superior performance to common methods on single-component and multi-component mixture datasets, remarkably improving regression precision while without needing user-selected parameters and eliminating the interference of irrelevant and redundant information. Furthermore, in-depth analysis reveals that latent encoded feature possesses strong nonlinear feature representation capabilities, low computational costs, wide adaptability, and robustness against noise interference. This highlights its effectiveness in spectral regression tasks and indicates its potential in other application fields. Sufficient experimental results show that our proposed method provides a novel and effective feature extraction approach for spectral analysis, which is simple, suitable for various methods, and can meet the measurement needs of different real-world scenarios. © 2024 Elsevier B.V.

关键词Raman spectroscopy Quantitative analysis Deep learning Spectral encoder Feature extraction
DOI10.1016/j.saa.2024.124036
收录类别EI
语种英语
出版者Elsevier B.V.
EI入藏号20240815597901
引用统计
文献类型期刊论文
条目标识符http://ir.opt.ac.cn/handle/181661/97245
专题光谱成像技术研究室
通讯作者Wang, Quan
作者单位1.Key Laboratory of Spectral Imaging Technology, Xi'an Institute of Optics and Precision Mechanics of the Chinese Academy of Sciences, Shaanxi; 710076, China;
2.The Key Laboratory of Biomedical Spectroscopy of Xi'an, Shaanxi; 710076, China;
3.University of Chinese Academy of Sciences, Beijing; 100049, China
推荐引用方式
GB/T 7714
Gao, Chi,Fan, Qi,Zhao, Peng,et al. Spectral encoder to extract the efficient features of Raman spectra for reliable and precise quantitative analysis[J]. Spectrochimica Acta - Part A: Molecular and Biomolecular Spectroscopy,2024,312.
APA Gao, Chi.,Fan, Qi.,Zhao, Peng.,Sun, Chao.,Dang, Ruochen.,...&Wang, Quan.(2024).Spectral encoder to extract the efficient features of Raman spectra for reliable and precise quantitative analysis.Spectrochimica Acta - Part A: Molecular and Biomolecular Spectroscopy,312.
MLA Gao, Chi,et al."Spectral encoder to extract the efficient features of Raman spectra for reliable and precise quantitative analysis".Spectrochimica Acta - Part A: Molecular and Biomolecular Spectroscopy 312(2024).
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