树方法、支持向量机、Naïve贝叶斯和逻辑回归在咖啡豆图像上的比较

R. R. Waliyansyah, U. H. Hasbullah
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引用次数: 6

摘要

咖啡是印尼人最喜欢的饮料之一。印度尼西亚有两种咖啡,即阿拉比卡咖啡和罗布斯塔咖啡。咖啡豆的分类通常以传统的方式完成&依赖于人的感官。然而,人的感官往往是不一致的,因为它取决于当时的精神或身体状况,只有定性的测量才能确定。本研究采用数字图像处理技术对咖啡豆进行分类。使用的参数是纹理分析,使用灰度共生矩阵(GLCM)方法,具有4个特征,即能量,相关性,均匀性和对比度。对于特征提取使用了分类算法,即Naïve贝叶斯、树、支持向量机(SVM)和逻辑回归。对咖啡豆分类模型的评价使用以下参数:AUC, F1, CA, precision & recall。使用的数据集是29张阿拉比卡咖啡豆的图像和29张罗布斯塔咖啡豆的图像。使用交叉验证来测试模型的准确性。得到的结果将使用混淆矩阵进行评估。通过对模型的测试和评价,得出支持向量机方法最优,AUC = 1, CA = 0.983, F1 = 0.983, Precision = 0.983, Recall = 0.983。
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Comparison of Tree Method, Support Vector Machine, Naïve Bayes, and Logistic Regression on Coffee Bean Image
Coffee is one of the many favorite drinks of Indonesians. In Indonesia there are 2 types of coffee, namely Arabica & Robusta. The classification of coffee beans is usually done in a traditional way & depends on the human senses. However, the human senses are often inconsistent, because it depends on the mental or physical condition in question at that time, and only qualitative measures can be determined. In this study, to classify coffee beans is done by digital image processing. The parameters used are texture analysis using the Gray Level Coocurrence Matrix (GLCM) method with 4 features, namely Energy, Correlation, Homogeneity & Contrast. For feature extraction using a classification algorithm, namely Naïve Bayes, Tree, Support Vector Machine (SVM) and Logistic Regression. The evaluation of the coffee bean classification model uses the following parameters: AUC, F1, CA, precision & recall. The dataset used is 29 images of Arabica coffee beans and 29 images of Robusta beans. To test the accuracy of the model using Cross Validation. The results obtained will be evaluated using the confusion Matrix. Based on the results of testing and evaluation of the model, it is obtained that the SVM method is the best with the value of AUC = 1, CA = 0.983, F1 = 0.983, Precision = 0.983 and Recall = 0.983.
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