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A Plant Recognition Approach Using Shape and Color Features in Leaf Images

机译:一种使用叶片图像形状和颜色特征的植物识别方法

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Recognizing plants is a vital problem especially for biologists, chemists, and environmentalists. Plant recognition can be performed by human experts manually but it is a time consuming and low-efficiency process. Automation of plant recognition is an important process for the fields working with plants. This paper presents an approach for plant recognition using leaf images. Shape and color features extracted from leaf images axe used with k-Nearest Neighbor, Support Vector Machines, Naive Bayes, and Random Forest classification algorithms to recognize plant types. The presented approach is tested on 1897 leaf images and 32 kinds of leaves. The results demonstrated that success rate of plant recognition can be improved up to 96% with Random Forest method when both shape and color features are used.
机译:识别植物是一个重要的问题,尤其适用于生物学家,化学家和环保主义者。工厂识别可以手动由人类专家执行,但它是耗时和低效的过程。植物识别的自动化是与植物一起使用的田地的重要过程。本文介绍了使用叶片图像的工厂识别方法。从叶片图像AX中提取的形状和颜色特征,用于k-collect邻居,支持向量机,天真贝叶斯和随机森林分类算法来识别植物类型。在1897年叶片图像和32种叶子上测试了所提出的方法。结果表明,当使用两种形状和颜色特征时,植物识别的成功率高达96%,随机森林方法。

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