Smartphone Application for Deep Learning-Based Rice Plant Disease Detection

Heri Andrianto, Suhardi, A. Faizal, Fladio Armandika
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引用次数: 16

Abstract

An increase in the human population requires an increase in agricultural production. Generally, the most important thing in agriculture that affects the quantity and quality of crops is plant diseases. In general, a farmer knows that his plant is attacked by a disease through direct vision. However, this process is sometimes inaccurate. With the development of machine learning technology, plant disease detection can be done automatically using deep learning. In this study, we report on a deep learning-based rice disease detection system that we have developed, which consists of a machine learning application on a cloud server and an application on a smartphone. The smartphone application functions to capture images of rice plant leaves, send them to the application on the cloud server, and receive classification results in the form of information on the types of plant diseases. The results showed that the smartphone-based rice plant disease detection application functioned well, which was able to detect diseases in rice plants. The performance of the rice plant disease detection system with VGG16 architecture has a train accuracy value of 100% and a test accuracy value of 60%. The test accuracy value can be improved by adding the number of datasets and increasing the quality of the dataset. It is hoped that with this system, rice plant disease control can be carried out appropriately so that yields will be maximized.
基于深度学习的水稻病害检测智能手机应用
人口的增加要求农业生产的增加。一般来说,在农业中影响作物数量和质量的最重要的事情是植物病害。一般来说,农民通过直接的视觉就知道他的植物受到了疾病的侵袭。然而,这个过程有时并不准确。随着机器学习技术的发展,利用深度学习技术可以实现植物病害的自动检测。在这项研究中,我们报告了我们开发的基于深度学习的水稻病害检测系统,该系统由云服务器上的机器学习应用程序和智能手机上的应用程序组成。智能手机应用程序的功能是捕捉水稻叶片的图像,将其发送到云服务器上的应用程序,并以植物病害类型信息的形式接收分类结果。结果表明,基于智能手机的水稻植物病害检测应用程序运行良好,能够检测水稻植物病害。采用VGG16结构的水稻病害检测系统的训练精度值为100%,测试精度值为60%。通过增加数据集数量和提高数据集质量,可以提高测试精度值。希望有了这个系统,可以适当地进行水稻植物病害控制,从而实现产量的最大化。
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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