基于学习向量量化神经网络的茶叶样本分类

S. Damarla, M. Kundu
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引用次数: 0

摘要

提出了一种基于学习向量量化(LVQ)神经网络的监督多类分类方法,对5个商业品牌的茶叶样本进行分类;布鲁克邦德,双钻,立顿,立顿大吉岭和漫威。利用电子舌进行实验室实验,获得了分类器设计所需的数据。开发了基于多层感知器、加权k近邻和马氏距离的多类分类器,比较LVQ神经网络分类器的分类结果。LVQ神经网络分类器的分类率达到97.9%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of Tea Samples using Learning Vector Quantization Neural Network
A supervised multi-class classification method based on learning vector quantization (LVQ) neural network was proposed to classify tea samples of five commercial brands; Brook bond, Double-Diamond, Lipton, Lipton-Darjeeling and Marvel. Data required for classifier design were obtained by performing laboratory experiments with electronic tongue. Multi-class classifiers based on multilayer perceptron, weighted k-nearest neighbors and Mahalanobis distance were developed to compare the results of LVQ neural network classifier. The LVQ neural network classifier showed superior performance with classification rate of 97.9%.
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