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Shape recognition through multi-level fusion of features and classifiers

机译:通过多级功能和分类器的形状识别

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摘要

Shape recognition is a fundamental problem and a special type of image classification, where each shape is considered as a class. Current approaches to shape recognition mainly focus on designing low-level shape descriptors, and classify them using some machine learning approaches. To achieve effective learning of shape features, it is essential to ensure that a comprehensive set of high quality features can be extracted from the original shape data. Thus, we have been motivated to develop methods of fusion of features and classifiers for advancing the classification performance. In this paper, we propose a multi-level framework for fusion of features and classifiers in the setting of granular computing. The proposed framework involves creation of diversity among classifiers, through adopting feature selection and fusion to create diverse feature sets and to train diverse classifiers using different learning algorithms. The experimental results show that the proposed multilevel framework can effectively create diversity among classifiers leading to considerable advances in the classification performance.
机译:形状识别是一个基本问题和特殊类型的图像分类,其中每个形状被认为是类。目前的形状识别方法主要专注于设计低级形状描述符,并使用一些机器学习方法对它们进行分类。为了实现有效学习形状特征,必须确保可以从原始形状数据中提取全面的高质量特征。因此,我们有动力开发功能和分类器的融合方法,以推进分类性能。在本文中,我们提出了一种多级框架,用于在粒度计算的设置中融合特征和分类器。拟议的框架涉及通过采用特征选择和融合来创建分类器之间的多样性来创建不同的功能集,并使用不同的学习算法培训不同的分类器。实验结果表明,建议的多级框架可以有效地在分类器之间产生多样性,这导致分类性能的相当大的进步。

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