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Detection of Disease in Citrus Plants through Leaf Images using a Convolutional Neural Network

机译:基于卷积神经网络的柑橘叶片图像病害检测

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Citrus is one of the most commonly consumed fruits by humans due to its delicious taste and vitamin C. For citrus plant cultivators, it is crucial to recognize the problem early so that it does not interfere with citrus plant growth or even prevent citrus plant death. Creating a computer-based application that automatically recognizes citrus plant diseases will be more manageable for farmers to eradicate immediately. In this paper, a recognition model of citrus plant diseases is developed using a CNN to classify the disease of citrus leave images into four classes: Blackspot, Cancer, Greening, and Healthy. This dataset was obtained from the Kaggle website. An evaluation using the 5-fold crossvalidation for a dataset of 600 image data of citrus leaves shows that the developed model gives an accuracy of 95,6%. The accuracy results in this study are better than previous studies using the M-SVM model and weight segmentation with an accuracy of 90.4%.
机译:柑橘是人类最常食用的水果之一,因为其味道鲜美,富含维生素C。对于柑橘类植物栽培者来说,尽早认识到这一问题至关重要,这样它就不会干扰柑橘类植物的生长,甚至防止柑橘类植物死亡。创建一个基于计算机的应用程序,自动识别柑橘类植物疾病,将更易于管理,农民可以立即根除。本文利用CNN建立了柑橘植物病害识别模型,将柑橘叶片病害图像分为黑斑、癌症、绿化和健康四类。该数据集来自Kaggle网站。对600个柑橘叶片图像数据集进行了5倍交叉验证,结果表明,该模型的准确率为95.6%。本研究的准确率结果优于之前使用M-SVM模型和权重分割的研究,准确率为90.4%。

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