灰度共生矩阵(GLCM)方法在中药番石榴叶品质类型分类中的应用

Sholihul Ibad, Wiwiek Hayyin Suristiyanti, M. N. A. Farah, Nova Rijati, Catur Supriyanto
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引用次数: 1

摘要

目前,仍有许多人使用传统药物,如使用番石榴叶作为止泻药。但是不同类型的番石榴叶品质不同,对于传统药材来说,有些类型的番石榴叶具有不同的叶形特征,很难区分叶子的品质。本研究的目的是将番石榴叶的质量分为“好”和“差”两个等级。本研究使用的方法从数据收集开始,然后是预处理。在完成预处理后,GLCM方法将与Matlab应用程序一起应用,GLCM方法应用的结果将产生一个数据矩阵,该数据矩阵将随后用于在RapidMiner上实现神经网络算法进行分类过程,并将产生一个精度值。本研究的结果产生了几个属性,即样本类型中的角秒矩(ASM)为数据属性1,反差(contrast)为数据属性2,逆差矩(IDM)为数据属性3,熵(entropy)为数据属性4,相关性(correlation)为数据属性5。对番石榴进行测试,最终将神经网络算法应用于本研究,准确率达到95%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of Grayscale Co-occurrence Matrix (GLCM) Method for Classification of Quality Type of Guava Leaves as Traditional Medicine Using Neural Network Algorithm
Currently, there are still many people who use traditional medicine such as the use of guava leaves as anti-diarrhea medicine. But the types of guava leaves have different qualities for traditional medicine, some types of guava leaves have different leaf shape characteristics, and it will be difficult to distinguish the quality of the leaves. The purpose of this study was to classify the quality of guava leaf species with the classification of "good" quality and "bad" quality. The method used in this study starts with data collection, then the next process is Pre-Processing. After doing the Pre-Processing, the GLCM method will be applied with the Matlab application, the results of the application of the GLCM method will produce a data matrix which will later be used for the process of implementing the neural network algorithm on RapidMiner for the classification process and will produce an accuracy value. The results of this study produce several attributes, namely Angular Second Moment (ASM) as data attribute 1, contrast as data attribute 2, Inverse Different Moment (IDM) as data attribute 3, entropy as data attribute 4, and correlation as data attribute 5 in the sample type. Guava was tested, then the final result of the application of the neural network algorithm in this study resulted in an accuracy of 95%.
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