局部二值模式和k近邻在手指叶片图像分类中的性能分析

A. Ningtyas, E. Nababan, S. Efendi
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引用次数: 1

摘要

由于k -最近邻(KNN)方法具有较高的分类精度,因此经常被研究人员用于分类过程,但它也存在对噪声敏感的缺点。本研究旨在介绍一种利用KNN方法对手指叶片进行分类的物体识别系统。为了解决KNN方法的不足,研究人员采用了局部二值模式(Local Binary Pattern, LBP)方法来提取叶子的特征。在特征提取的比较方面,研究者采用了灰度共生矩阵(GLCM)方法。在这项研究中使用的数据是木瓜叶和茶叶(有良好和有害形式的标签)。在本研究中,我们进行了一个实验设计,根据训练数据和测试数据的比值(NI/Np)进行区分,有90个训练数据和45个测试数据,其中特征提取方法使用了10个特征。实验表明,在NI/Np = 67%:33%的比例下,LBP提取方法对手指叶片图像进行分类的性能或系统性能表明,训练数据的分类结果接近95%,测试数据的分类结果接近76%,而GLCM提取方法的分类结果表明,训练数据的分类结果接近83%,测试数据的分类结果接近58%。
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Performance analysis of local binary pattern and k-nearest neighbor on image classification of fingers leaves
The K-Nearest Neighbor (KNN) method is often used by researchers for the classification process because it has a relatively great level of accuracy, however it also has a weakness which is sensitive of the noises. This research is aims to introduce an object recognition (identification) system of fingers leaves by classified using the KNN method. To resolves the weaknesses of the KNN method, the researcher has used the Local Binary Pattern (LBP) method to extract features of the leaves. For the comparison in feature extraction, the researcher has used the Gray Level Co-Occurrence Matrix (GLCM) method. The data that were used on this research are papaya leaves and chaya leaves (with the labels such as good and damage forms). In this research, an experimental design has been carried out that was differentiated by according to the comparison (of ratio) between training data and testing data (NI/Np), there were 90 training data and 45 testing data, where the feature extraction method used the 10 of features. Experimentally, it was shown that by using the ratio NI/Np = 67%:33%, the performance or system performance for classifying the images of fingers leaves by using the LBP extraction method showed that training data was obtained the results close to 95% and testing data was obtained the results close to 76%, while by using the GLCM extraction showed that training data was obtained the results close to 83% and testing data was obtained the results close to 58%.
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