A Machine Intelligent Framework for Detection of Rice Leaf Diseases in Field Using IoT Based Unmanned Aerial Vehicle System

Sourav Kumar Bhoi, K. Prasad. K, Rajermani Thinakaran
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Abstract

Rice is an important food in our day-to-day life. It has rich sources of carbohydrates that are highly essential for body growth and development. Rice is an important crop in agriculture, where it enhances a country’s economy. However, if rice plants arediseased and not monitored regularly then the crop in the field is wasted and it reduces the proper production rate. Therefore, there should be a mechanism which regularly monitors the crop in a field to detect any disease to rice plant. In this paper, a framework is proposed for identification of rice leaf disease using IoT based Unmanned Aerial Vehicle (UAV) system. Here, the UAV monitors an entire field, capture the images and sends the images to the machine intelligent cloud for detection of rice leaf diseases. The cloud is installed with a proposed stacking classifier that classify the diseased rice plant images received from UAV into different categories. The dataset of these rice leaf diseases is collected from Kaggle source. The performance of the stacking classifier installed at the cloud is evaluated using Python based Orange 3.26 tool. It is observed form the results that stacking classifier outperforms the conventional machine learning models in detecting the actual disease with a classification accuracy (CA) of 86.7%.
基于物联网无人机系统的水稻叶片病害检测机器智能框架
大米是我们日常生活中的重要食物。它含有丰富的碳水化合物,对身体的生长和发育至关重要。水稻是一种重要的农业作物,它能促进一个国家的经济发展。然而,如果水稻患病且不定期监测,那么田地里的作物就会被浪费,从而降低适当的产量。因此,应该建立一种定期监测稻田作物的机制,以发现水稻植株的任何疾病。本文提出了一种基于物联网的无人机(UAV)系统的水稻叶片病害识别框架。在这里,无人机监控整个田地,捕捉图像并将图像发送到机器智能云,以检测水稻叶片疾病。云上安装了一个提出的堆叠分类器,将从无人机接收到的患病水稻植株图像分为不同的类别。这些水稻叶片病害的数据集来自Kaggle源。安装在云上的堆叠分类器的性能使用基于Python的Orange 3.26工具进行评估。从结果中可以看出,叠加分类器在检测实际疾病方面优于传统的机器学习模型,分类准确率(CA)达到86.7%。
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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