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An Image Classification Method Based on Multi-feature Fusion and Multi-kernel SVM

机译:基于多特征融合和多核支持向量机的图像分类方法

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Content-based image classification is such a technique which adapt to mass image data access and classification operation and it is based on the color, texture and shape feature. Image automatic classification using computer is one of the current hot topic. The traditional image classification method based on a single feature is ineffective. In this paper, we use multi-kernel SVM classifiers and the multi-feature fusion of feature weighting for image classification. Feature weighting is to set a certain weight for various features according to a certain standards and it is an effective way to find the most effective features. We use Corel Image Library as the database. The experimental result shows that the accuracy of image classification based on multi-feature fusion with multi-kernel SVM is much higher than a single feature. The method in this paper is an effective approach to improve the accuracy of image classification and expand possibilities for other application.
机译:基于内容的图像分类是一种适应大量图像数据访问和分类操作的技术,它基于颜色,纹理和形状特征。使用计算机进行图像自动分类是当前的热门话题之一。传统的基于单一特征的图像分类方法是无效的。在本文中,我们使用多核SVM分类器和特征加权的多特征融合进行图像分类。特征加权是根据一定的标准为各种特征设置一定的权重,是找到最有效特征的有效方法。我们使用Corel图像库作为数据库。实验结果表明,基于多特征融合和多核支持向量机的图像分类精度远高于单个特征。本文中的方法是一种有效的方法,可以提高图像分类的准确性,并为其他应用扩展可能性。

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