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Classification Modeling Method for Near-Infrared Spectroscopy of Tobacco Based on Multimodal Convolution Neural Networks

机译:基于多模式卷积神经网络的烟草近红外光谱法的分类建模方法

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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.
机译:烟草的起源是确定风格特征和烟草内在质量的最重要因素。近红外光谱有许多应用用于识别烟草来源。为了提高烟草原点分类的准确性,提出了一种基于多模式卷积神经网络(CNN)的近红外光谱(NIRS)识别方法,利用CNN的强特征提取能力。首先,使用一维卷积神经网络(1-D CNN)来提取并组合一维NIRS数据的模式特征,然后提取的特征用于分类。其次,一维NIRS数据被转换为二维光谱图像,并且通过二维卷积神经网络(2-D CNN)方法从二维光谱图像中提取结构特征。分类是通过全局和本地训练特征的组合来执行的。最后,研究了不同网络结构参数对模型识别性能的影响,并选择了最佳CNN模型。通过使用来自中国和3个国外的10个主要烟草生产省份的5,200个烟草样本的网德,建立了烟草起源的多模式NIR-CNN识别模型。 1-D CNN和2-D CNN模型的分类精度分别为93.15%和93.05%,比传统的PLS-DA方法更好。实验结果表明,1-D CNN和2-D CNN的应用可以准确地和可靠地区分NIRS数据,并且可以开发成具有重要促销价值的新的快速识别方法。

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