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首页> 外文期刊>Journal of intelligent & fuzzy systems: Applications in Engineering and Technology >Isolated hand-written digit recognition using a neurofuzzy scheme and multiple classification
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Isolated hand-written digit recognition using a neurofuzzy scheme and multiple classification

机译:使用神经模糊方案和多重分类的孤立手写数字识别

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摘要

A neuro-fuzzy system for isolated hand-written digit recognition using a similarity fuzzy measure is presented. The system is composed of two main blocks: a first block that normalises the input and compares it with a set of fuzzy patterns, and a second block with a multi layer perceptron (MLP) to perform the definitive classification. The comparison with the fuzzy patterns is carried out via a fuzzy similarity measure that uses the Yager parametric norms and co-norms. Along this work, several values of the parameter have been studied, in order to obtain the optimum. The simplicity of the method makes it extremely quick. Recognition accuracy of the method is about 90% in single classification and close to 97,5% when using a multiple classification scheme.
机译:提出了一种神经模糊系统,用于使用相似性模糊度量进行孤立的手写数字识别。该系统由两个主要模块组成:第一个模块对输入进行归一化并将其与一组模糊模式进行比较,第二个模块具有多层感知器(MLP)以执行确定的分类。通过使用Yager参数范数和协范数的模糊相似性度量来进行与模糊模式的比较。通过这项工作,已经研究了参数的几个值,以获得最佳值。该方法的简单性使其非常快速。该方法的识别精度在单分类中约为90%,而在使用多分类方案时则接近97.5%。

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