Plant Leaf Disease Diagnosis from Color Imagery Using Co-Occurrence Matrix and Artificial Intelligence System

Chaowalit Khitthuk, A. Srikaew, K. Attakitmongcol, P. Kumsawat
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引用次数: 20

Abstract

This paper presents plant leaf disease diagnosis system from color imagery using unsupervised neural network. Images are processed using both color and texture features. The system is mainly composed of two processes: disease feature extraction and disease classification. The process of disease feature extraction analyzes feature appearance using statistic-based gray-level co-occurrence matrix and texture feature equations. The disease classification process deploys the unsupervised simplified fuzzy ARTMAP neural network to categorize types of disease. Four types of grape leaf disease images are used to test the system's classification performance which are rust, scab, downy mildew and no disease. Desirable results have been achieved with more than 90% of accuracy. The proposed system can be applied to diagnosis other type of plant disease sufficiently.
基于共现矩阵和人工智能系统的彩色图像植物叶片病害诊断
提出了一种基于无监督神经网络的彩色图像植物叶片病害诊断系统。图像使用颜色和纹理特征进行处理。该系统主要由疾病特征提取和疾病分类两个过程组成。疾病特征提取过程利用基于统计的灰度共生矩阵和纹理特征方程分析特征的外观。疾病分类过程采用无监督简化模糊ARTMAP神经网络对疾病类型进行分类。利用葡萄叶片锈病、结痂、霜霉病和无病4种病害图像,对系统的分类性能进行了测试。取得了满意的结果,准确率超过90%。该系统可充分应用于其他类型植物病害的诊断。
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