Plant Classification based on Grey Wolf Optimizer based Support Vector Machine (GOS) Algorithm

P. Keerthika, R. Devi, S. Prasad, R. Venkatesan, Hemalatha Gunasekaran, K. Sudha
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Abstract

Leaves are the primary identifying feature of trees and other plants. Many of these plants are used in the pharmaceutical industry as industrial crops. Growing automation in industries including commerce and medicine has made accurate leaf identification crucial. Leaves are typically classified according to morphological or genetic characteristics. As a result of their numerous physical differences, however, it is becoming increasingly difficult to categorize the diverse leaf cultivars that exist. Several evolutionary shifts over the past several decades have resulted in an increase in the number of variants of a certain leaf type. To manually sift and identify these leaves is a laborious process. A novel hybrid GOS algorithm is proposed in this study for detecting leaves based on their shape, color, and texture. Three types of leaves (apple, cucumber, and mango) are used as examples, and features for each are extracted using Image Processing techniques, before being optimized with the Grey Wolf Optimizer and finally classified with the SVM (Support Vector Machine) classifier algorithm. Experimental results show that the proposed GOS work improves upon the SVM classifier, with a classification accuracy of 96.83 percent.
基于灰狼优化器支持向量机(GOS)算法的植物分类
叶子是树木和其他植物的主要特征。这些植物中有许多被用作医药工业的工业作物。商业和医药等行业的自动化程度越来越高,这使得准确的叶片识别变得至关重要。叶子通常根据形态或遗传特征分类。然而,由于它们的许多物理差异,对存在的各种叶片品种进行分类变得越来越困难。在过去的几十年里,几次进化转变导致了某种叶子类型变异数量的增加。手工筛选和识别这些叶子是一个费力的过程。本文提出了一种基于叶子形状、颜色和纹理的混合GOS算法。以苹果、黄瓜和芒果三种类型的叶子为例,利用图像处理技术提取每种叶子的特征,然后使用灰狼优化器进行优化,最后使用支持向量机分类算法进行分类。实验结果表明,该方法在SVM分类器的基础上得到了改进,分类准确率达到96.83%。
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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