Deep Convolutional Neural Networks for Raman Spectrum Recognition: A Unified Solution

08/18/2017
by   Jinchao Liu, et al.
0

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 of ad-hoc preprocessing steps. 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.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
01/24/2023

1D Convolutional neural networks and machine learning algorithms for spectral data classification with a case study for Covid-19

Machine and deep learning algorithms have increasingly been applied to s...
research
04/19/2018

Recognizing Birds from Sound - The 2018 BirdCLEF Baseline System

Reliable identification of bird species in recorded audio files would be...
research
12/29/2014

Spectral classification using convolutional neural networks

There is a great need for accurate and autonomous spectral classificatio...
research
12/25/2014

Brachiaria species identification using imaging techniques based on fractal descriptors

The use of a rapid and accurate method in diagnosis and classification o...
research
02/25/2022

Raman Spectrum Matching with Contrastive Representation Learning

Raman spectroscopy is an effective, low-cost, non-intrusive technique of...
research
01/15/2018

Generalizing, Decoding, and Optimizing Support Vector Machine Classification

The classification of complex data usually requires the composition of p...

Please sign up or login with your details

Forgot password? Click here to reset