Plant Disease Detection and Classification Using Machine Learning Algorithm

Dhruvi Gosai, B. Kaka, Dweepna Garg, Radhika Patel, Amit Ganatra
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引用次数: 3

Abstract

Agriculture accepts a basic part by virtue of the quick improvement of the general population and extended interest in food in India. Hence, it is required to increase harvest yield. One serious cause of low collect yield is an infection brought about by microorganisms, infection, and organisms. Plant disease investigation is one of the major and essential tasks in the part of cultivating. It tends to be forestalled by utilizing plant disease detection techniques. To monitor, observe or take care of plant diseases manually is a very complex task. It requires gigantic proportions of work, and moreover needs outrageous planning time; consequently, image processing is utilized to distinguish diseases of plants. Plant disease classification can be done by using machine learning algorithms which include steps like dataset creation, load pictures, pre-preparing, segmentation, feature extraction, training classifier, and classification. The main objective of this research is to construct one model, which classifies the healthy and diseased harvest leaves and predicts diseases of plants. In this paper, the researchers have trained a model to recognize some unique harvests and 26 diseases from the public dataset which contains 54,306 images of the diseases and healthy plant leaves that are collected under controlled conditions. This paper worked on the ResNets algorithm. A residual neural network (ResNet) is a subpart of the artificial neural network (ANN). ResNet algorithm contains a residual block that can be used to solve the problem of vanishing/exploding gradient. ResNet algorithm is also used for creating Residual Network. For the image classification, ResNets achieve a much well result. The ResNets techniques applied some of the parameters like scheduling learning rate, gradient clipping, and weight decay. Using the ResNet algorithm, the researchers expect high accuracy results and detecting more diseases from the various harvests.
基于机器学习算法的植物病害检测与分类
在印度,由于人口的迅速增长和对食物的广泛关注,农业接受了一个基本部分。因此,需要提高收获产量。农作物产量低的一个严重原因是微生物、传染病和有机体带来的感染。植物病害调查是栽培工作的重要内容之一。利用植物病害检测技术往往可以预防这种疾病。人工监测、观察或处理植物病害是一项非常复杂的任务。它需要大量的工作,而且需要大量的计划时间;因此,利用图像处理技术对植物病害进行识别。植物病害分类可以通过使用机器学习算法来完成,包括数据集创建、加载图片、预准备、分割、特征提取、训练分类器和分类等步骤。本研究的主要目的是建立一个模型,对健康和患病的收获叶片进行分类,并预测植物的病害。在本文中,研究人员训练了一个模型,从公共数据集中识别一些独特的收获和26种疾病,该数据集中包含54306张在受控条件下收集的疾病和健康植物叶片图像。本文研究的是ResNets算法。残差神经网络(ResNet)是人工神经网络的一个分支。ResNet算法包含一个残差块,可以用来解决梯度消失/爆炸的问题。ResNet算法也用于创建残留网络。在图像分类方面,ResNets取得了很好的效果。ResNets技术应用了一些参数,如调度学习率、梯度裁剪和权重衰减。通过使用ResNet算法,研究人员期望得到高准确性的结果,并从各种收获中检测出更多的疾病。
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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