Deep learning image-based automated application on classification of tomato leaf disease by pre-trained deep convolutional neural networks

IF 0.6 Q3 ENGINEERING, MULTIDISCIPLINARY
ReddyPriya Madupuri, Dinesh Reddy Vemula, Anil Carie Chettupally, A. Sangi, Palla Ravi
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引用次数: 0

Abstract

The agriculture sector is one of the major sectors in India. India is well known for the production of various varieties of spices, fruits, vegetables, herbs, etc. Along with the pollution, the diseases that are affecting plants are increasing and there are various reasons for this. Tomato is one of the high-demand crops in the market and is produced in large quantities. There are many diseases that tomatoes get affected by because of the virus, fungus, bacteria, etc. In this project, we proposed a model to identify the diseases of tomato plants using images of tomato plant leaves. Our main goal is to develop a good model with decent accuracy and a mobile application that works with or without the internet for users, especially farmers. The Convolution Neural Network-based approach is used to create the model for this project. This proposed system model gives 98 % accuracy and that model is converted to the TF Lite model which is used in the application. This application can precisely predict the disease of the tomato leaf and suggest the treatment for it.
基于深度学习图像的预训练深度卷积神经网络在番茄叶病分类中的应用
农业部门是印度的主要部门之一。印度以生产各种香料、水果、蔬菜、草药等而闻名。随着污染的加剧,影响植物的疾病也在增加,原因多种多样。番茄是市场上需求量大的作物之一,产量大。由于病毒、真菌、细菌等,番茄会受到许多疾病的影响。在这个项目中,我们提出了一个利用番茄植物叶片图像识别番茄植物疾病的模型。我们的主要目标是为用户,尤其是农民,开发一个精度不错的好模型和一个无论有没有互联网都能工作的移动应用程序。基于卷积神经网络的方法用于创建该项目的模型。该提出的系统模型给出了98%的准确度,并且该模型被转换为应用中使用的TF-Lite模型。该应用程序可以准确地预测番茄叶片的病害,并为其治疗提供建议。
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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76
审稿时长
40 weeks
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