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Evaluation of Data Mining Strategies for Classification of Black Tea Based on Image-Based Features

机译:基于图像的特征评估红茶分类的数据挖掘策略

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In this study, a new procedure based on computer vision was developed for qualitative classification of black tea. Images of 240 samples from four different classes of black tea, including Orange Pekoe (OP), Flowery Orange Pekoe (FOP), Flowery Broken Orange Pekoe (FBOP), and Pekoe Dust One (PD-ONE), were acquired and processed using a computer vision system. Eighteen color features, 13 gray-image texture features, and 52 wavelet texture features were extracted and assessed. Two common heuristic feature selection methods: correlation-based feature selection (CFS) and principal component analysis (PCA), were used for selecting the most significant features. Seven of the primary features were selected by CFS as the most relevant ones, while PCA converted the original variables into 11 independent components. These final discriminatory vectors were evaluated by using four different classification methods including decision tree (DT), support vector machine (SVM), Bayesian network (BN), and artificial neural networks (ANN) to predict the qualitative category of tea samples. Among the studied classifiers, the ANN with 7-10-4 topology developed by CFS-selected features provided the best classifier with a classification rate of 96.25%. The other methods assayed provided slightly lower accuracies than ANN from 86.25% for BN till 87.50% for SVM and 88.75% for DT. In all the cases, the accuracy of the classifiers increased when using the CFS-selected features as input variables in front of PCA obtained ones. It can be concluded that image-based features are strong characterizing factors which can be effectively applied for tea quality evaluation.
机译:在这项研究中,开发了一种基于计算机视觉的新程序,为红茶进行定性分类。从四种不同类红茶的240个样本的图像,包括橙色Pekoe(OP),Fordry Ocound Pekoe(FOP),Flowery Brann Orange Pekoe(FBOP)和Pekoe Dust One(PD-One),并使用A处理电脑视觉系统。提取并评估了18个颜色特征,13个灰色图像纹理特征和52个小波纹理特征。两个常见的启发式特征选择方法:基于相关的特征选择(CFS)和主成分分析(PCA),用于选择最重要的功能。 CFS选择七个主要特征作为最相关的功能,而PCA将原始变量转换为11个独立组件。通过使用四种不同的分类方法评估这些最终鉴别载体,包括决策树(DT),支持向量机(SVM),贝叶斯网络(BN)和人工神经网络(ANN)来预测茶样品的定性类别。在研究的分类器中,CFS所选功能开发的7-10-4拓扑的ANN提供了最佳分类器,分类率为96.25%。测定的其他方法可提供比ANN的略低低于86.25%,对于SVM至87.50%,DT的88.75%。在所有情况下,在使用CFS所选择的特征时,分类器的准确性增加,因为PCA前面的输入变量获得了。可以得出结论,基于图像的特征是强大的表征因素,可以有效地应用于茶茶质质量评价。

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