Performance evaluation of ResNet model for classification of tomato plant disease

Q3 Mathematics Epidemiologic Methods Pub Date : 2023-01-01 DOI:10.1515/em-2021-0044
Sachin Kumar, S. Pal, Vijendra Pratap Singh, P. Jaiswal
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引用次数: 7

Abstract

Abstract Objectives The plant tomato (Solanum Lycopersicum) is vastly infected by various diseases. Exact diagnosis on time contributes a significant job to the good production of tomato crops. The key objective of this article is to recognize the infection in tomato leaves with better accuracy and in less time. Methods Nowadays deep convolutional neural networks have attained surprising outcomes in several applications, together with the categorization of tomato leaves infected with several diseases. Our work is based on deep CNN with different residual networks. Finally; we have performed tomato leaves disease classification by using pre-trained deep CNN with the residual network using MATLAB available on the cloud. Results We have used a dataset of tomato leaves for the experiments which contain six different types of diseases with one healthy tomato leaf class. We have collected 6,594 tomato leaves dataset from Plant Village and we did not collect actual tomato leaves for testing. The outcome obtained by ResNet-50 shows a significant result with 96.35% accuracy for 50% training and 50% testing data and if we focus on time consumption for the outcome then ResNet-18 consumes 12.46 min for 70% training and 30% testing. Conclusions After observation of several outcomes, we have concluded that ResNet-50 shows a better accuracy for 50% training and 50% testing of data and ResNet-18 shows better efficiency for 70% training and 30% testing of data for the same dataset on the cloud.
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番茄病害分类的ResNet模型性能评价
摘要目的番茄(Solanum Lycopersicum)是一种广泛感染多种病害的植物。及时准确诊断对番茄高产有重要意义。本文的主要目的是在较短的时间内更准确地识别番茄叶片的侵染。方法近年来,深度卷积神经网络在多种病害的番茄叶片分类等应用中取得了令人惊讶的成果。我们的工作是基于具有不同残差网络的深度CNN。最后;我们使用云上可用的MATLAB,使用预训练的深度CNN和残差网络进行番茄叶片病害分类。结果我们使用了一个番茄叶片数据集进行实验,该数据集包含6种不同类型的疾病,其中一个健康番茄叶片类。我们从Plant Village收集了6594个番茄叶片数据集,我们没有收集实际的番茄叶片进行测试。ResNet-50获得的结果在50%的训练和50%的测试数据下显示出96.35%的准确率,如果我们关注结果的时间消耗,那么ResNet-18在70%的训练和30%的测试数据下消耗12.46分钟。在观察了几个结果后,我们得出结论,ResNet-50在对数据进行50%训练和50%测试时具有更好的准确率,而ResNet-18在云上对同一数据集进行70%训练和30%测试时具有更好的效率。
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来源期刊
Epidemiologic Methods
Epidemiologic Methods Mathematics-Applied Mathematics
CiteScore
2.10
自引率
0.00%
发文量
7
期刊介绍: Epidemiologic Methods (EM) seeks contributions comparable to those of the leading epidemiologic journals, but also invites papers that may be more technical or of greater length than what has traditionally been allowed by journals in epidemiology. Applications and examples with real data to illustrate methodology are strongly encouraged but not required. Topics. genetic epidemiology, infectious disease, pharmaco-epidemiology, ecologic studies, environmental exposures, screening, surveillance, social networks, comparative effectiveness, statistical modeling, causal inference, measurement error, study design, meta-analysis
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