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Sparse Representation Classification of Tobacco Leaves Using Near-Infrared Spectroscopy and a Deep Learning Algorithm
Authors:Jianqiang Zhang  Ying Hou  Changgui Qiu  Shuangyan Yang  Changyu Li
Institution:1. Yunnan Reascend Tobacco Technology (Group) Company Limited, Kunming, China;2. Faculty of Science, Kunming University of Science and Technology, Kunming, China;3. Yunnan Comtestor Company, Kunming, China
Abstract:A spare representation classification method for tobacco leaves based on near-infrared spectroscopy and deep learning algorithm is reported in this paper. All training samples were used to make up a data dictionary of the sparse representation and the test samples were represented by the sparsest linear combinations of the dictionary by sparse coding. The regression residual of the test sample to each class was computed and finally assigned to the class with the minimum residual. The effectiveness of spare representation classification method was compared with K-nearest neighbor and particle swarm optimization–support vector machine algorithms. The results show that the classification accuracy of the proposed method is higher and it is more efficient. The results suggest that near-infrared spectroscopy with spare representation classification algorithm may be an alternative method to traditional methods for discriminating classes of tobacco leaves.
Keywords:Deep learning algorithm  near-infrared spectroscopy  sparse representation classification
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