Issue 8, 2022

Deeply-recursive convolutional neural network for Raman spectra identification

Abstract

Raman spectroscopy has been widely used in various fields due to its unique and superior properties. For achieving high spectral identification speeds and high accuracy, machine learning methods have found many applications in this area, with convolutional neural network-based methods showing great advantages. In this study, we propose a Raman spectral identification method using a deeply-recursive convolutional neural network (DRCNN). It has a very deep network structure (up to 16 layers) for improving performance without introducing more parameters for recursive layers, which eases the difficulty of training. We also propose a recursive-supervision extension to ease the difficulty of training. By testing several different open-source spectral databases, DRCNN has achieved higher prediction accuracies and better performance in transfer learning compared with other CNN-based methods. Superior identification performance is demonstrated, especially by identification, for characteristically similar and indistinguishable spectra.

Graphical abstract: Deeply-recursive convolutional neural network for Raman spectra identification

Article information

Article type
Paper
Submitted
03 Dec 2021
Accepted
23 Jan 2022
First published
10 Feb 2022
This article is Open Access
Creative Commons BY-NC license

RSC Adv., 2022,12, 5053-5061

Deeply-recursive convolutional neural network for Raman spectra identification

W. Zhou, Y. Tang, Z. Qian, J. Wang and H. Guo, RSC Adv., 2022, 12, 5053 DOI: 10.1039/D1RA08804A

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