基于深度学习的叶片病害分类技术的高效计算

Saifa Azmiri Mohona, Sakifa Aktar, Md. Martuza Ahamad
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引用次数: 4

摘要

作为一个农业大国,孟加拉国的发展很大程度上依赖于农业。由于农业仍然是孟加拉国经济的主要领域之一,孟加拉国正试图通过创造成功的发展农业来独立生产粮食。与此同时,植物叶病是非常自然的,有时是无法控制的,对作物造成损害,并对孟加拉国的农艺造成重大损害。为了预防这一问题,本工作旨在对几种植物叶片病害进行分类,特别是玉米、葡萄、芒果和辣椒,以诊断叶片病害,以便及早采取适当的措施进行治疗。我们还可以通过疾病分类将这四种植物的叶子进行多类分类。因此,我们使用基于卷积神经网络(CNN)的深度学习模型来分析结果,并比较了四个CNN模型:VGG-16、VGG-19、GoogLeNet和我们提出的模型的得分。最后,该模型的计算精度达到了99.91%。此外,我们发现深度学习可能是一种合适的方法来区分植物的病叶和健康叶。
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Efficient Computation of Leaf Disease Classification Techniques using Deep Learning
Being a major agricultural country, a considerable amount of development depends on the agriculture of Bangladesh. As agriculture stays one of the main areas of the Bangladeshi economy, Bangladesh is attempting to become independent in producing food by creating successful developing agronomy. At the same time, plant leaf disease is quite natural and sometimes uncontrollable that causes damage of crops, as well as causing significant damage in the agronomy of Bangladesh. To prevent the problem, this work aims to classify several plant leaf diseases, specifically corn, grape, mango, and pepper, to diagnose the leaf diseases for proper early action to cure. We have also been able to classify by means of disease classification as a multi-class classification of those four plant leaves. Therefore, We have used Convolutional Neural Network (CNN) based Deep Learning models to analyze the results, and we have compared the scores of four CNN models: VGG-16, VGG-19, GoogLeNet, and our proposed model. Finally, our proposed model imparted better computation and achieved 99.91% accuracy. Furthermore, we have found that deep learning could be an appropriate approach to classify ill leaves of the plants from the healthy.
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