Classification and Identification of Tomato Leaf Disease Using Deep Neural Network

A. Batool, Syeda Basmah Hyder, Aymen Rahim, Namra Waheed, Muhammad Adeel Asghar, Fawad
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引用次数: 20

Abstract

Agricultural productivity is something on which the economy highly depends. In addition to this, plant diseases and pests are a major problem in the agricultural sector. Their detection at the initial stage is required to get rid of all the diseases as quickly as possible and to save ourselves from the destruction of crops. Different kinds of pesticides have been used to save the plants from diseases. Even after all these safety measures, it is observed that still, the disease keeps spreading in the field. Why is it SO? The problem here arises that in many cases we are not sure of the type of disease and so a wrong pesticide might have been used instead. Hence, it all goes in vain. This means the classification of disease is as important as the detection. In this paper, an advanced classification model was proposed which detects and classifies tomato leaf disease. A training dataset consisting of 450 images is used and image features are extracted using several models and kNN is applied for the classification. Classification accuracy of 76.1% is achieved using AlexNet model and it came out to be the highest in comparison to other models.
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基于深度神经网络的番茄叶病分类与鉴定
农业生产力是经济高度依赖的东西。除此之外,植物病虫害也是农业部门的一个主要问题。我们需要在最初阶段就发现这些疾病,以便尽快消除所有的疾病,并使我们免于对作物的破坏。人们使用了不同种类的杀虫剂来保护植物免受病害。即使采取了所有这些安全措施,据观察,该疾病仍在该领域继续传播。为什么会这样?这里出现的问题是,在许多情况下,我们不确定疾病的类型,因此可能使用了错误的农药。因此,一切都白费了。这意味着疾病的分类与检测同样重要。提出了一种用于番茄叶病检测和分类的高级分类模型。使用由450张图像组成的训练数据集,使用多个模型提取图像特征,并应用kNN进行分类。AlexNet模型的分类准确率达到76.1%,是其他模型中最高的。
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