Potato Leaf Disease Classification Using Deep Learning Approach

Rizqi Amaliatus Sholihati, I. A. Sulistijono, Anhar Risnumawan, Eny Kusumawati
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引用次数: 46

Abstract

Potato is one of the staple foods that widely consumed, becoming the 4th staple food consumed throughout the world. Also, the world demand for potato is increasing significantly, primarily due to the world pandemic coronavirus. However, potato diseases are the leading cause of the decline in the quality and quantity of the harvest. Inappropriate classification and late detection of the disease's type will drastically worsen the plant conditions. Fortunately, several diseases in potato plants can be identified based on leaf conditions. Therefore, in this paper, we present a system to classify the four types of diseases in potato plants based on leaf conditions by utilising deep learning using the VGG16 and VGG19 convolutional neural network architecture model to obtain an accurate classification system. This experiment has achieved an average accuracy of 91%, which indicates the feasibility of the deep neural network approach.
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马铃薯叶病分类的深度学习方法
马铃薯是世界上消费最广泛的主食之一,已成为世界第四大主食。此外,世界对马铃薯的需求正在显著增加,这主要是由于世界大流行冠状病毒。然而,马铃薯病害是造成收成质量和数量下降的主要原因。不适当的分类和不及时发现病害类型将大大恶化植物条件。幸运的是,马铃薯植物中的几种疾病可以根据叶片状况来识别。因此,本文采用VGG16和VGG19卷积神经网络架构模型,利用深度学习技术,提出了一种基于叶片状况对马铃薯四种病害进行分类的系统,以获得准确的分类系统。该实验平均准确率达到91%,表明了深度神经网络方法的可行性。
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