Abstract

The origin of tobacco is the most important factor in determining the style characteristics and intrinsic quality of tobacco. There are many applications for the identification of tobacco origin by near-infrared spectroscopy. In order to improve the accuracy of the tobacco origin classification, a near-infrared spectrum (NIRS) identification method based on multimodal convolutional neural networks (CNN) was proposed, taking advantage of the strong feature extraction ability of the CNN. Firstly, the one-dimensional convolutional neural network (1-D CNN) is used to extract and combine the pattern features of one-dimensional NIRS data, and then the extracted features are used for classification. Secondly, the one-dimensional NIRS data are converted into two-dimensional spectral images, and the structure features are extracted from two-dimensional spectral images by the two-dimensional convolutional neural network (2-D CNN) method. The classification is performed by the combination of global and local training features. Finally, the influences of different network structure parameters on model identification performance are studied, and the optimal CNN models are selected and compared. The multimodal NIR-CNN identification models of tobacco origin were established by using NIRS of 5,200 tobacco samples from 10 major tobacco producing provinces in China and 3 foreign countries. The classification accuracy of 1-D CNN and 2-D CNN models was 93.15% and 93.05%, respectively, which was better than the traditional PLS-DA method. The experimental results show that the application of 1-D CNN and 2-D CNN can accurately and reliably distinguish the NIRS data, and it can be developed into a new rapid identification method of tobacco origin, which has an important promotion value.

Highlights

  • Academic Editor: Rongda Xu e origin of tobacco is the most important factor in determining the style characteristics and intrinsic quality of tobacco. ere are many applications for the identification of tobacco origin by near-infrared spectroscopy

  • The one-dimensional near-infrared spectrum (NIRS) data are converted into two-dimensional spectral images, and the structure features are extracted from two-dimensional spectral images by the two-dimensional convolutional neural network (2-D convolutional neural networks (CNN)) method. e classification is performed by the combination of global and local training features

  • The influences of different network structure parameters on model identification performance are studied, and the optimal CNN models are selected and compared. e multimodal NIR-CNN identification models of tobacco origin were established by using NIRS of 5,200 tobacco samples from 10 major tobacco producing provinces in China and 3 foreign countries. e classification accuracy of 1-D CNN and 2-D CNN models was 93.15% and 93.05%, respectively, which was better than the traditional partial least squares discriminant analysis algorithm (PLS-DA) method. e experimental results show that the application of 1-D CNN and 2-D CNN can accurately and reliably distinguish the NIRS data, and it can be developed into a new rapid identification method of tobacco origin, which has an important promotion value

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Summary

Introduction

Academic Editor: Rongda Xu e origin of tobacco is the most important factor in determining the style characteristics and intrinsic quality of tobacco. ere are many applications for the identification of tobacco origin by near-infrared spectroscopy. In order to improve the accuracy of the tobacco origin classification, a near-infrared spectrum (NIRS) identification method based on multimodal convolutional neural networks (CNN) was proposed, taking advantage of the strong feature extraction ability of the CNN. The one-dimensional convolutional neural network (1-D CNN) is used to extract and combine the pattern features of one-dimensional NIRS data, and the extracted features are used for classification. Many researchers have attempted to identify tobacco origins by pattern recognition methods based on near-infrared spectrum (NIRS). Zhang et al [8] proposed a fault diagnosis model based on deep one-dimensional convolutional neural network (1-D CNN), and a larger size convolution kernel and a neurons dropout method were used to realize accurate and stable diagnosis based on the original vibration signal. At present, there are few reports on the classification of NIRS based on CNN

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