Convolutional neural networks for vibrational spectroscopic data analysis

被引:310
|
作者
Acquarelli, Jacopo [1 ]
van Laarhoven, Twan [1 ]
Gerretzen, Jan [2 ]
Tran, Thanh N. [2 ,3 ]
Buydens, Lutgarde M. C. [2 ]
Marchiori, Elena [1 ]
机构
[1] Radboud Univ Nijmegen, Inst Comp & Informat Sci, NL-6525 ED Nijmegen, Netherlands
[2] Radboud Univ Nijmegen, Inst Mol & Mat, NL-6525 ED Nijmegen, Netherlands
[3] Merck Sharp & Dohme Ltd, Ctr Math Sci, Oss, Netherlands
关键词
Vibrational spectroscopy; Convolutional neural networks; Preprocessing; MIDINFRARED SPECTROSCOPY; LEAST-SQUARES; TRANSFORM;
D O I
10.1016/j.aca.2016.12.010
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
In this work we show that convolutional neural networks (CNNs) can be efficiently used to classify vibrational spectroscopic data and identify important spectral regions. CNNs are the current state-of-the-art in image classification and speech recognition and can learn interpretable representations of the data. These characteristics make CNNs a good candidate for reducing the need for preprocessing and for highlighting important spectral regions, both of which are crucial steps in the analysis of vibrational spectroscopic data. Chemometric analysis of vibrational spectroscopic data often relies on preprocessing methods involving baseline correction, scatter correction and noise removal, which are applied to the spectra prior to model building. Preprocessing is a critical step because even in simple problems using 'reasonable' preprocessing methods may decrease the performance of the final model. We develop a new CNN based method and provide an accompanying publicly available software. It is based on a simple CNN architecture with a single convolutional layer (a so-called shallow CNN). Our method outperforms standard classification algorithms used in chemometrics (e.g. PLS) in terms of accuracy when applied to non-preprocessed test data (86% average accuracy compared to the 62% achieved by PLS), and it achieves better performance even on preprocessed test data (96% average accuracy compared to the 89% achieved by PIS). For interpretability purposes, our method includes a procedure for finding important spectral regions, thereby facilitating qualitative interpretation of results. (C) 2016 Elsevier B.V. All rights reserved.
引用
收藏
页码:22 / 31
页数:10
相关论文
共 50 条
  • [21] Convolutional Neural Networks for Font Classification
    Tensmeyer, Chris
    Saunders, Daniel
    Martinez, Tony
    2017 14TH IAPR INTERNATIONAL CONFERENCE ON DOCUMENT ANALYSIS AND RECOGNITION (ICDAR), VOL 1, 2017, : 985 - 990
  • [22] Modelling Data Poisoning Attacks Against Convolutional Neural Networks
    Jonnalagadda, Annapurna
    Mohanty, Debdeep
    Zakee, Ashraf
    Kamalov, Firuz
    JOURNAL OF INFORMATION & KNOWLEDGE MANAGEMENT, 2024, 23 (02)
  • [23] Data augmentation on convolutional neural networks to classify mechanical noise
    Abeysinghe, Asith
    Tohmuang, Sitthichart
    Davy, John Laurence
    Fard, Mohammad
    APPLIED ACOUSTICS, 2023, 203
  • [24] Traffic Data Imputation Using Deep Convolutional Neural Networks
    Benkraouda, Ouafa
    Thodi, Bilal Thonnam
    Yeo, Hwasoo
    Menendez, Monica
    Jabari, Saif Eddin
    IEEE ACCESS, 2020, 8 (08): : 104740 - 104752
  • [25] Weather Data For The Prevention Of Agricultural Production With Convolutional Neural Networks
    Tarik, Hajji
    Jamil, Ouazzani Mohemmad
    2019 INTERNATIONAL CONFERENCE ON WIRELESS TECHNOLOGIES, EMBEDDED AND INTELLIGENT SYSTEMS (WITS), 2019,
  • [26] Convolutional neural networks for crowd behaviour analysis: a survey
    Tripathi, Gaurav
    Singh, Kuldeep
    Vishwakarma, Dinesh Kumar
    VISUAL COMPUTER, 2019, 35 (05) : 753 - 776
  • [27] Photography Style Analysis using Convolutional Neural Networks
    Zouros, Michael
    Giannakopoulos, Theodoros
    2022 16TH INTERNATIONAL CONFERENCE ON SIGNAL-IMAGE TECHNOLOGY & INTERNET-BASED SYSTEMS, SITIS, 2022, : 170 - 176
  • [28] Balanced Image Data Based Ensemble of Convolutional Neural Networks
    Jan, Zohaib Md.
    Verma, Brijesh
    2019 IEEE SYMPOSIUM SERIES ON COMPUTATIONAL INTELLIGENCE (IEEE SSCI 2019), 2019, : 2418 - 2424
  • [29] Convolutional Neural Networks for Multimodal Remote Sensing Data Classification
    Wu, Xin
    Hong, Danfeng
    Chanussot, Jocelyn
    IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, 2022, 60
  • [30] A Novel Online Ensemble Convolutional Neural Networks for Streaming Data
    Xuan Cuong Pham
    Thi Thu Thuy Nguyen
    Liew, Alan Wee-Chung
    NEURAL INFORMATION PROCESSING (ICONIP 2019), PT I, 2019, 11953 : 199 - 210