基于田间病区图像处理的水稻病害快速检测技术

Taohidul Islam, M. Sah, S. Baral, Rudra RoyChoudhury
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引用次数: 64

摘要

植物病害是指使植物的正常结构、生长和功能发生扭曲的异常生理过程。疾病降低了作物的质量和数量,这反过来又影响了像孟加拉国这样以农业为主要职业的国家的经济。水稻是我国的主要作物,病害分类对防治产量和数量的损失具有重要意义。水稻病害的分类包括肉眼可观察到的患病部分的模式和颜色。手工观察模式和颜色来对疾病进行分类需要过多的工作,并且在处理非本地疾病时似乎不太有用。本文提出了一种利用图像处理技术,基于患病部位RGB值的百分比对疾病进行检测和分类的新方法。一旦从受影响地区提取RGB的百分比并将其分成不同的类别,它们就会被输入一个称为朴素贝叶斯的简单分类器,该分类器将疾病分为不同的类别。该技术已成功检测鉴定了水稻褐斑病、水稻白叶枯病和稻瘟病3种病害。该方法只使用一个特征,即患病部分的RGB值,计算时间最短,从而有效地对疾病进行识别和分类。这种技术不需要处理整片叶子,甚至只用一小片含有水稻病害部分的叶子样本就能成功地检测出病害。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Faster Technique on Rice Disease Detectionusing Image Processing of Affected Area in Agro-Field
Plant disease is defined as an abnormal physiological process that distorts the plant's normal structure, growth and function. Disease reduces quality as well as quantity of the crops which in turn affects the economy of country like Bangladesh where agriculture is the main occupation. Since Rice is the major crop, classification of disease in paddy is very important as it prevents the losses in the yields and quantity. Classification of rice disease includes visually observable patterns and color of the affected portion. Manual observation of patterns and colors to classify the diseases require excessive work and appears to be less useful while dealing with non-native diseases. This paper presents a new technique to detect and classify the diseases based on percentage of RGB value of the affected portion using image processing. Once the percentage of RGB from the affected region is extracted and grouped into various classes, they are fed to a simple classifier called Naive Bayes which classifies the disease into various categories. This technique has successfully detected and identified three rice diseases namely rice brown spot, rice bacterial blight, and rice blast. This technique is efficient and faster because it uses only one feature i.e. RGB values of the affected portion which requires minimum computation time to identify and classify the diseases. Rather than processing the whole leaf, this technique even successfully detects the diseases using only a small sample of leaf containing the affected portion for rice disease.
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