Feature extraction for identification of sugarcane rust disease

Ratih Kartika Dewi, R. V. Hari Ginardi
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引用次数: 10

Abstract

This research propose an image pattern classification to identify rust disease in sugarcane leaf with a combination of texture and color feature extraction. The purpose of this research is to find appropriate features that can identify sugarcane rust disease. Firstly, normal and diseased images are collected and pre-processed. Then, features of shape, color and texture are extracted from these images. After that, these images are classified by support vector machine classifier. A combination of several features are used to evaluate the appropriate features to find distinctive features for identification of rust disease. When a single feature is used, shape feature has the lowest accuracy of 51% and texture feature has the highest accuracy of 96.5%. A combination of texture and color feature extraction results a highest classification accuracy of 97.5%. A combination of texture and color feature extraction with polynomial kernel results in 98.5 % classification accuracy.
特征提取在甘蔗锈病鉴定中的应用
本研究提出一种结合纹理和颜色特征提取的甘蔗叶片锈病图像模式分类方法。本研究的目的是寻找可以识别甘蔗锈病的适当特征。首先采集正常图像和病变图像并进行预处理;然后,从这些图像中提取形状、颜色和纹理特征。然后用支持向量机分类器对这些图像进行分类。几个特征的组合被用来评估适当的特征,以找到识别锈病的独特特征。当使用单个特征时,形状特征的准确率最低,为51%,纹理特征的准确率最高,为96.5%。结合纹理和颜色特征提取的分类准确率最高,达到97.5%。结合多项式核提取纹理和颜色特征,分类准确率达到98.5%。
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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