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A hybrid approach for image recognition combining type-2 fuzzy logic, modular neural networks and the Sugeno integral

机译:结合2型模糊逻辑,模块化神经网络和Sugeno积分的混合图像识别方法

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In this paper, a hybrid approach for image recognition combining type-2 fuzzy logic, modular neural networks and the Sugeno integral is described. Interval type-2 fuzzy inference systems are used to perform edge detection and to calculate fuzzy densities for the decision process. A type-2 fuzzy system is used for edge detection, which is a pre-processing applied to the training data for better use in the neural networks. Another type-2 fuzzy system calculates the fuzzy densities necessary for the Sugeno integral, which is used to integrate results of the neural network modules. In this case, fuzzy logic is shown to be a good methodology to improve the results of a neural system facilitating the representation of the human perception. A comparative study is also made to verify that the proposed approach is better than existing approaches and improves the performance over type-1 fuzzy logic.
机译:本文介绍了一种将类型2模糊逻辑,模块化神经网络和Sugeno积分相结合的混合图像识别方法。区间2型模糊推理系统用于执行边缘检测并计算决策过程的模糊密度。类型2模糊系统用于边缘检测,这是对训练数据进行的预处理,以便在神经网络中更好地使用。另一个2型模糊系统计算Sugeno积分所需的模糊密度,该积分用于积分神经网络模块的结果。在这种情况下,模糊逻辑被证明是一种改进神经系统结果的良好方法,该方法有助于人类感知的表示。还进行了比较研究,以验证所提出的方法比现有方法更好,并且可以改善Type-1模糊逻辑的性能。

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