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首页> 外文期刊>International journal of computational vision and robotics >Ethiopian maize diseases recognition and classification using support vector machine
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Ethiopian maize diseases recognition and classification using support vector machine

机译:基于支持向量机的埃塞俄比亚玉米病害识别与分类

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摘要

Currently, more than 72 maize diseases found in Ethiopia that attacked different part of maize. There are different traditional mechanisms to identify and classify maize leaf diseases by chemical analysis or visual observation. But, the traditional mechanisms have their own drawbacks take more time and require professional staff. Therefore, many researchers have been doing a lot in identifying and classifying the different types of diseases that attack maize using image processing. However, as far as the researcher's knowledge no attempt has been done for Ethiopian maize diseases dataset. In this study an attempt has been made to develop maize leaf diseases recognition and classification using both support vector machine model and image processing. To evaluate the recognition and classification accuracy from the total dataset of 800 images, 80% used for training and the remaining 20% for testing the model. Based on the experiment result using combined (texture, colour and morphology) features with support vector machine an average accuracy of 95.63% achieved.
机译:目前,在埃塞俄比亚发现了超过72种玉米疾病,袭击了玉米的不同部分。通过化学分析或目视观察,有不同的传统机制来鉴定和分类玉米叶病。但是,传统机制有其自身的缺点,需要花费更多的时间并需要专业人员。因此,许多研究人员在使用图像处理来识别和分类攻击玉米的不同类型疾病方面已经做了很多工作。但是,据研究人员所知,尚未对埃塞俄比亚玉米疾病数据集进行任何尝试。在这项研究中,已经尝试使用支持向量机模型和图像处理来开发玉米叶病的识别和分类。要从800张图像的总数据集中评估识别和分类的准确性,其中80%用于训练,其余20%用于测试模型。基于结合(纹理,颜色和形态)特征与支持向量机的实验结果,平均准确率达到95.63%。

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