草本植物识别的多分类器分析

P. Kaur, Sukhdev Singh
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引用次数: 2

摘要

本文从不同草本植物的叶片图像中提取叶片形状特征,利用多分类器进行植物自动识别。使用了四种不同的分类器,即支持向量机,KNN,随机森林和逻辑回归。在颜色、纹理、叶脉结构等所有特征中,形状特征被认为是一个重要的特征,因为叶子一年四季都是可用的,叶子形状包含了更多的特征来提取。特征提取过程中提取的几何形状特征包括叶片的长度、宽度、面积、周长、叶片包围矩形的面积、叶片在矩形中的百分比、叶片在四个不同象限中的计算像素。在所有病例中,LR (Logistic回归)表现最好的有7例,RF表现最好的有5例。SVM和LR模型分类器在特征6上表现最好,准确率为95%。KNN和RF模型分类器在特征3上表现最好,准确率分别为90%和93%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of Multiple Classifiers for Herbal Plant Recognition
In this paper multiple classifiers are used for automatic plant recognition based on the shape of leaf features which are extracted from the leaf images using different herbal plants. Four different classifiers have been used namely SVM, KNN, Random Forest, and Logistic regression. Shape feature is considered as an important feature among all other features like- color, texture, vein structure, etc. as a leaf is available throughout the year and leaf shape contains more features to extract. Geometric shape features that are calculated as leaf’s length, width, area, perimeter, area of leaf enclosed in a rectangle, percentage of leaf in the rectangle, calculated pixels of leaf in four different quadrants are extracted during feature extraction. Among all cases, LR (Logistic regression) performed best in 7 cases while RF performed in 5 cases. SVM and LR model classifiers performed best with 95% accuracy for feature 6. KNN and RF model classifiers performed best with 90% and 93% accuracy respectively for feature 3.
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