A Hybrid Recogniser for Handwritten Symbols Based on Fuzzy Logic and Self-Organizing Maps

A. Cronin, John A. Fitzgerald, Mohand Tahar Kechadi
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引用次数: 3

Abstract

In this paper we present a hybrid approach to handwritten symbol recognition based on two different methods and principles. A fuzzy rules based recogniser and a self-organizing map recogniser are combined to form our hybrid system. These two systems complement each other well, firstly because their feature extraction techniques differ greatly, and secondly because one is a model-based and the other is a discriminative classifier. Each system generates a ranked list of outputs with associated confidence values, and these outputs are combined to produce a single result. The approach has achieved high recognition rates in testing on digits and lowercase characters from the UNIPEN database
基于模糊逻辑和自组织映射的手写体符号混合识别
本文提出了一种基于两种不同方法和原理的手写体符号识别混合方法。将基于模糊规则的识别器与自组织地图识别器相结合,形成了混合系统。这两个系统可以很好地互补,首先是因为它们的特征提取技术有很大的不同,其次是因为一个是基于模型的,另一个是判别分类器。每个系统生成一个带有相关置信度值的输出排序列表,这些输出被组合起来产生一个结果。该方法在测试联合国人口基金数据库中的数字和小写字符时取得了很高的识别率
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