Broccoli leaf diseases classification using support vector machine with particle swarm optimization based on feature selection

Yulio Ferdinand, W. A. Al Maki
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引用次数: 5

Abstract

Broccoli is a plant that has many benefits. The flower parts of broccoli contain protein, calcium, vitamin A, vitamin C, and many more. However, in its cultivation, broccoli plants have obstacles such as the presence of pests and diseases that can affect production of broccoli. To avoid this, the authors build a model to identify diseases in broccoli through leaf images with a size of 128x128 pixels. The model is constructed to classify healthy leaves, and disease leaves using the image processing method that uses machine learning stages. There are several stages, including K-Means segmentation, colour feature extraction, and classification using SVM (Support Vector Machine) with RBF kernel and PSO (Particle Swarm Optimization) for reduce dimensionality data. The model that has been built compares the SVM model and the SVM-PSO model. It produces good accuracy in the training of 97.63% and testing accuracy of 94.48% for SVM-PSO and 85.82% for training, and 86.25% for testing in the SVM model. Therefore, this proposed model can produce good results in categorizing healthy and diseased leaves in broccoli.
基于特征选择的支持向量机粒子群优化西兰花叶片病害分类
西兰花是一种有很多好处的植物。花椰菜的花部分含有蛋白质、钙、维生素A、维生素C等等。然而,在其种植过程中,西兰花植物存在障碍,如病虫害的存在,可以影响西兰花的生产。为了避免这种情况,作者建立了一个模型,通过128x128像素的叶子图像来识别西兰花的疾病。该模型采用基于机器学习阶段的图像处理方法对健康叶片和病叶进行分类。有几个阶段,包括k均值分割,颜色特征提取,以及使用支持向量机(支持向量机)与RBF核和PSO(粒子群优化)对降维数据进行分类。所建立的模型对SVM模型和SVM- pso模型进行了比较。SVM- pso的训练准确率为97.63%,测试准确率为94.48%,训练准确率为85.82%,SVM模型的测试准确率为86.25%。因此,该模型在西兰花健康叶片和患病叶片的分类中具有较好的效果。
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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来源期刊
International Journal of Advances in Intelligent Informatics
International Journal of Advances in Intelligent Informatics Computer Science-Computer Vision and Pattern Recognition
CiteScore
3.00
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0.00%
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