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    Rights statement: © The Royal Society of Chemistry 2017

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Deep convolutional neural networks for Raman spectrum recognition: a unified solution

Research output: Contribution to Journal/MagazineJournal articlepeer-review

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  • Jinchao Liu
  • Margarita Osadchy
  • Lorna Ashton
  • Michael Foster
  • Christopher J. Solomon
  • Stuart J. Gibson
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Article number4067
<mark>Journal publication date</mark>7/11/2017
<mark>Journal</mark>Analyst
Issue number21
Volume142
Number of pages8
Publication StatusPublished
Early online date28/09/17
<mark>Original language</mark>English

Abstract

Machine learning methods have found many applications in Raman spectroscopy, especially for the identification of chemical species. However, almost all of these methods require non-trivial preprocessing such as baseline correction and/or PCA as an essential step. Here we describe our unified solution for the identification of chemical species in which a convolutional neural network is trained to automatically identify substances according to their Raman spectrum without the need for preprocessing. We evaluated our approach using the RRUFF spectral database, comprising mineral sample data. Superior classification performance is demonstrated compared with other frequently used machine learning algorithms including the popular support vector machine method.

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© The Royal Society of Chemistry 2017