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首页> 外文期刊>Computational Intelligence Magazine, IEEE >Learning Distributions of Image Features by Interactive Fuzzy Lattice Reasoning in Pattern Recognition Applications
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Learning Distributions of Image Features by Interactive Fuzzy Lattice Reasoning in Pattern Recognition Applications

机译:模式识别应用中的交互式模糊格推理学习图像特征分布

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摘要

Abstract-This paper describes the recognition of image patterns based on novel representation learning techniques by considering higher-level (meta-)representations of numerical data in a mathematical lattice. In particular, the interest here focuses on lattices of (Type-1) Intervals' Numbers (INs), where an IN represents a distribution of image features including orthogonal moments. A neural classifier, namely fuzzy lattice reasoning (flr) fuzzy-ARTMAP (FAM), or flrFAM for short, is described for learning distributions of INs; hence, Type-2 INs emerge. Four benchmark image pattern recognition applications are demonstrated. The results obtained by the proposed techniques compare well with the results obtained by alternative methods from the literature. Furthermore, due to the isomorphism between the lattice of INs and the lattice of fuzzy numbers, the proposed techniques are straightforward applicable to Type-1 and/or Type-2 fuzzy systems. The far-reaching potential for deep learning in big data applications is also discussed.
机译:摘要-本文介绍了一种基于新颖的表示学习技术的图像模式识别方法,其中考虑了数学格中数字数据的更高级别(元)表示形式。特别地,这里的关注点集中在(Type-1)间隔数(IN)的晶格上,其中IN表示图像特征的分布,包括正交矩。描述了用于学习IN的神经分类器,即模糊格推理(flr)Fuzzy-ARTMAP(FAM)或简称flrFAM。因此,出现了Type-2 IN。演示了四个基准图像模式识别应用程序。通过所提出的技术获得的结果与通过文献中的替代方法获得的结果进行了很好的比较。此外,由于IN的晶格和模糊数的晶格之间的同构,所提出的技术可直接应用于类型1和/或类型2模糊系统。还讨论了大数据应用中深度学习的深远潜力。

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