Automated Plant Disease Analysis (APDA): Performance Comparison of Machine Learning Techniques

Asma Akhtar, Aasia Khanum, S. Khan, A. Shaukat
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引用次数: 74

Abstract

Plant disease analysis is one of the critical tasks in the field of agriculture. Automatic identification and classification of plant diseases can be supportive to agriculture yield maximization. In this paper we compare performance of several Machine Learning techniques for identifying and classifying plant disease patterns from leaf images. A three-phase framework has been implemented for this purpose. First, image segmentation is performed to identify the diseased regions. Then, features are extracted from segmented regions using standard feature extraction techniques. These features are then used for classification into disease type. Experimental results indicate that our proposed technique is significantly better than other techniques used for Plant Disease Identification and Support Vector Machines outperforms other techniques for classification of diseases.
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自动化植物病害分析(APDA):机器学习技术的性能比较
植物病害分析是农业领域的重要任务之一。植物病害的自动识别与分类有助于实现农业产量的最大化。在本文中,我们比较了几种机器学习技术在从叶片图像中识别和分类植物病害模式方面的性能。为此目的实现了一个三阶段框架。首先对图像进行分割,识别病变区域;然后,使用标准特征提取技术从分割的区域中提取特征。这些特征随后被用于疾病类型的分类。实验结果表明,我们提出的技术明显优于其他用于植物病害识别的技术,支持向量机在病害分类方面优于其他技术。
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