Grey wolf optimization for one-against-one multi-class support vector machines

Esraa Elhariri, Nashwa El-Bendary, A. Hassanien, A. Abraham
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引用次数: 27

Abstract

Grey Wolf Optimization (GWO) algorithm is a new meta-heuristic method, which is inspired by grey wolves, to mimic the hierarchy of leadership and grey wolves hunting mechanism in nature. This paper presents a hybrid model that employs grey wolf optimizer (GWO) along with support vector machines (SVMs) classification algorithm to improve the classification accuracy via selecting the optimal settings of SVMs parameters. The proposed approach consists of three phases; namely pre-processing, feature extraction, and GWO-SVMs classification phases. The proposed classification approach was implemented by applying resizing, remove background, and extracting color components for each image. Then, feature vector generation has been implemented via applying PCA feature extraction. Finally, GWO-SVMs model is developed for selecting the optimal SVMs parameters. The proposed approach has been implemented via applying One-againstOne multi-class SVMs system using 3-fold cross-validation. The datasets used for experiments were constructed based on real sample images of bell pepper at different stages, which were collected from farms in Minya city, Upper Egypt. Datasets of total 175 images were used for both training and testing datasets. Experimental results indicated that the proposed GWO-SVMs approach achieved better classification accuracy compared to the typical SVMs classification algorithm.
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一对一多类支持向量机的灰狼优化
灰狼优化算法是受灰狼启发,模拟自然界中的领导层级和灰狼猎取机制而提出的一种新的元启发式算法。本文提出了一种采用灰狼优化器(GWO)和支持向量机(svm)分类算法的混合模型,通过选择支持向量机参数的最优设置来提高分类精度。拟议的办法包括三个阶段;即预处理、特征提取和gwo - svm分类阶段。该分类方法通过调整图像大小、去除背景和提取图像颜色分量来实现。然后,应用PCA特征提取实现特征向量生成。最后,建立了gwo - svm模型,用于选择最优svm参数。该方法通过使用3次交叉验证的One-againstOne多类支持向量机系统实现。实验数据集是基于上埃及明亚市农场不同阶段的甜椒真实样本图像构建的。175张图像的数据集被用于训练和测试数据集。实验结果表明,与典型的svm分类算法相比,本文提出的gwo - svm方法具有更好的分类精度。
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