利用反向传播人工神经网络识别水稻病害

J. W. Orillo, J. D. dela Cruz, Leobelle Agapito, Paul Jensen Satimbre, I. Valenzuela
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引用次数: 71

摘要

本研究采用数字图像处理技术,消除人工检测水稻病害的主观性,准确识别菲律宾农田常见的三种病害:(1)细菌性叶枯病,(2)褐斑病,(3)稻瘟病。图像处理部分使用MATLAB函数构建,包括图像增强、图像分割、特征提取等技术,其中提取4个特征进行病害分析:(1)叶片上被病害覆盖的比例;(2)疾病的R、G、B的平均值;(3)疾病的R、G、B的标准差;(4)疾病H、S、V的平均值。为了提高图像处理的精度和性能,本项目采用了反向传播神经网络。该网络的数据库涉及134张疾病图像,其中70%用于训练网络,15%用于验证,15%用于测试。经过处理后,程序会给出相应的策略选择,与检测到的疾病进行考虑。总的来说,这个程序被证明是100%准确的。
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Identification of diseases in rice plant (oryza sativa) using back propagation Artificial Neural Network
In this study, digital image processing was incorporated to eliminate the Subjectiveness of manual inspection of diseases in rice plant and accurately identify the three common diseases to Philippine's farmlands: (1) Bacterial leaf blight, (2) Brown spot, and (3) Rice blast. The image processing section was built using MATLAB functions and it comprises techniques such as image enhancement, image segmentation, and feature extraction, where four features are extracted to analyze the disease: (1) fraction covered by the disease on the leaf; (2) mean values for the R, G, and B of the disease; (3) standard deviation of the R, G, and B of the disease and; (4) mean values of the H, S and V of the disease. The Backpropagation Neural Network was used in this project to enhance the accuracy and performance of the image processing. The database of the network involved 134 images of diseases and 70% of these were used for training the network, 15% for validation and 15% for testing. After the processing, the program will give the corresponding strategic options to consider with the disease detected. Overall, the program was proven 100% accurate.
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