Mobile-Based Deep Learning for Yam Disease Diagnosis

Azeez Olawale Akinlolu, O. A. Odejobi, F. Ajayi, E. R. Jimoh
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Abstract

In many nations, tuber crops are crucial for both food security and the economy, constituting the staple diet for the Masses. Diseases make crops deviate from their normal growth, reducing crop yield and production. West Africa's yam productivity (yield) declined by 18.74% between 2009 to 2019, while productivity (yield) in Nigeria decreased by 23.47% between 2009 and 2019. Hence the need to build an intelligent system to assist crop growers to improve yields. The Convolution Neural Networks (CNN) deep learning model was used in this study to develop an intelligent mobile-based system for detecting Yam diseases. It was shown using a JAVA/XML Graphical User Interface (GUI). Three disease categories, namely Yam Anthracnose, Yam Mosaic Virus and Healthy were used in this study. The test data's total accuracy was 81.7%. Yam growers can utilize the GUI application program because it was designed to be user-friendly.
基于移动的山药疾病诊断深度学习
在许多国家,块茎作物对粮食安全和经济至关重要,是大众的主食。病害使作物偏离正常生长,降低作物产量和产量。西非山药产量(产量)在2009年至2019年期间下降了18.74%,尼日利亚的产量(产量)在2009年至2019年期间下降了23.47%。因此,需要建立一个智能系统来帮助作物种植者提高产量。本研究采用卷积神经网络(CNN)深度学习模型,开发了一种基于移动的番薯疾病检测智能系统。它是使用JAVA/XML图形用户界面(GUI)显示的。本研究采用甘薯炭疽病、甘薯花叶病毒和甘薯健康病三种疾病分类。测试数据的总准确率为81.7%。山药种植者可以利用GUI应用程序,因为它被设计为用户友好的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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