基于卷积神经网络的番茄叶片图像病害识别

Aulia Ikvanda Yoren, S. Suyanto
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引用次数: 2

摘要

农业中经常发生的问题是植物的病害。植物病害可导致农业生产减产。因此,植物病害的检测和分析至关重要,应尽早进行。不幸的是,植物的疾病往往出现在叶片上,而且受影响的叶片特征非常多样化,难以区分。这种现象给植物病害的自动识别带来困难。数字图像处理技术是用于识别叶片问题的技术之一。在这项研究中用作案例研究的植物是番茄植物。茄斑病、Septoria叶斑病、黄病毒是番茄植株可能经历的一些疾病。这些疾病应按其类型分类。本研究设计了一个系统来对番茄植株叶片所经历的三种疾病进行分类。收集了4400张叶子图像的数据集,并将其学习到卷积神经网络(CNN)中,使用增强过程对三个番茄植物问题进行分类。使用5倍交叉验证的评估表明,增强数据的CNN平均准确率为97.8%,最高准确率为99.5%。该结果优于之前的方法:AlexNet, Faster R-CNN和CNN +红绿蓝(RGB)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Tomato Plant Disease Identification through Leaf Image using Convolutional Neural Network
The problem that often occurs in agriculture is about diseases in plants. Plant diseases can result in reduced yields from agricultural production. Therefore, the detection and analysis of plant diseases are critical and should be done as early as possible. Unfortunately, diseases in plants often appear on the leaves, and the characteristics of the affected leaves are very diverse and difficult to distinguish. This phenomenon results in difficulty in the identification of plant diseases automatically. One of the technologies that can be used in identifying leaf problems is digital image processing technology. The plant used as a case study in this research is the tomato plant. Alternaria Solani, Septoria leaf spot, Yellow virus are some of the disorders that tomato plants can experience. These disorders should be classified according to their type. This research designs a system to classify three types of disease experienced by the tomato plant leaves. A dataset of 4400 leaf images is collected and learned to the Convolutional Neural Network (CNN) to classify three tomato plant problems using the Augmentation process. An evaluation using 5-fold cross-validation shows that CNN with augmentation data gives an average accuracy of 97.8% and the highest accuracy of 99.5%. This result is better than the previous methods: AlexNet, Faster R-CNN, and CNN + red green blue (RGB).
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