利用各种机器学习技术识别和分类行星叶病的研究

Premakumari Pujar, Ashutosh Kumar, Vineet Kumar
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摘要

本文概述了识别植物病害的方法。每个样本都会被分为不同的组别。分类方法包括根据纹理、颜色、形状和图案等形态特征识别健康叶片和病叶。由于植物的视觉特质非常接近,因此对植物进行分类和归类具有一定的挑战性,尤其是在对大面积植物进行分类和归类时。目前有几种基于计算机视觉和图像处理的方法。选择正确的分类方法可能很困难,因为结果取决于您提供的数据。植物叶片病害分类在农业和生物研究等领域有多种应用。本文总结了目前用于识别和分类叶病的几种方法,以及它们的优点和缺点。这些方法包括预处理方法、特征提取和选择方法、使用的数据集、分类器和性能指标。
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A survey on planet leaf disease identification and classification by various machine-learning technique
An overview of methods for identifying plants diseases is given in this article. Each sample is categorized by being divided into various groups. The approach of classification involves identifying healthy and diseased leaves based on morphological traits including texture, color, shape, and pattern, among others. Sorting and categorizing plants can be challenging, especially when doing so across a large area, due to the closeness of their visual qualities. There are several methods based on computer vision and image processing. Selecting the right categorization method can be difficult because the outcomes rely on the data you supply. There are several applications for the categorization of plant leaf diseases in fields like agriculture and biological research. This article gives a summary of several approaches currently in use for identifying and categorizing leaf diseases, as well as their benefits and drawbacks. These approaches include preprocessing methods, feature extraction and selection methods, datasets employed, classifiers, and performance metrics
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