Identification of Herbal Leaf Types Based on Their Image Using First Order Feature Extraction and Multiclass SVM Algorithm

Rohmat Indra Borman, Farli Rossi, Y. Jusman, Ashrani Aizzuddin Abd. Rahni, Syahrizal Dwi Putra, A. Herdiansah
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引用次数: 20

Abstract

One way to increase immunity and maintain immunity can be done by consuming herbal plants. This herbal medicine is empirically believed to be useful as a cultural treasure from generation to generation. All parts of the plant can be used as medicine, one of which is the leaves. However, most people do not know the herbal leaves. This herbal leaf can actually be recognized from the characteristics of its shape. This study aims to identify types of herbal leaves using first-order feature extraction and the Multiclass Support Vector Machine (Multiclass SVM) algorithm. First-order feature extraction is able to extract features using the parameters of mean, skewness, variance, kurtosis, and entropy. Meanwhile, Multiclass SVM identifies by obtaining the optimal line in separating the data set of two classes of two-dimensional space points in order to find the maximum hyperplane in separating the data points into classes so that they can be grouped. From the test results, the identification accuracy is an average of 76%. This shows that the algorithm has been able to identify, but needs improvement.
基于一阶特征提取和多类支持向量机算法的草本植物叶片类型图像识别
增加免疫力和维持免疫力的一种方法是食用草本植物。根据经验,这种草药被认为是代代相传的文化瑰宝。这种植物的所有部分都可用作药物,其中之一就是叶子。然而,大多数人不知道草药叶。这种草药叶子实际上可以从它的形状特征来识别。本研究的目的是利用一阶特征提取和多类支持向量机(Multiclass Support Vector Machine,简称Multiclass SVM)算法对草药叶片进行类型识别。一阶特征提取能够利用均值、偏度、方差、峰度和熵等参数提取特征。同时,Multiclass支持向量机通过对两类二维空间点的数据集进行分离得到最优直线进行识别,从而找到将数据点划分为类的最大超平面,从而对数据点进行分组。从测试结果来看,识别准确率平均为76%。这说明该算法已经能够识别,但还需要改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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