基于Android移动平台的卷积神经网络水稻叶病识别

M. F. X. Cham, Radius Tanone, Hendra Alexander T Riadi
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引用次数: 3

摘要

水稻是一种易受疾病影响的水稻生产植物,因此农民很难识别水稻叶片中存在的疾病类型。另一方面,农民需要方便地更有效和高效地识别水稻叶片中存在的疾病。看到深度学习和移动机器人的发展趋势,我们需要一个应用程序,可以帮助农民有效和高效地分析叶片疾病。本研究分为文献研究、应用程序设计与制作、应用程序测试与分析、结论得出和报告撰写等几个阶段。利用深度学习技术,在Tensorflow lite上开发卷积神经网络(CNN)模型,并将其存储在ML Kit服务中。此外,该模型可以嵌入到android移动平台上的检测应用程序中。这是为了帮助农民识别健康和不健康的水稻叶片。该算法的开发结果及其在基于android的移动应用程序中的应用运行良好,其中本研究中形成的模型对水稻叶片病害图像进行分类产生的准确率为80%。
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Identification of Rice Leaf Disease Using Convolutional Neural Network Based on Android Mobile Platform
Rice is a rice-producing plant that is susceptible to disease so it can make it difficult for farmers to identify the types of diseases that exist in rice leaves. On the other hand, farmers need convenience in identifying diseases that exist in rice leaves more effectively and efficiently. Seeing the development trend of deep learning and mobile android, we need an application that can help farmers to analyze diseases in leaves effectively and efficiently. This research was conducted in several stages including literature study, application design and manufacture, application testing and analysis as well as conclusion drawing and report writing. With deep learning technology, a Convolutional Neural Network (CNN) model was developed on Tensorflow lite and stored in the ML Kit service. Furthermore, the model can be embedded in a detection application built on the android mobile platform. This is to assist farmers in identifying healthy and unhealthy rice leaves. The results of the development of the algorithm and its application to an Android-based mobile application can run well where the level of accuracy generated from the model formed in classifying disease images on rice leaves in this study is 80%.
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