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Neural and fuzzy methods in handwriting recognition

机译:手写识别中的神经和模糊方法

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摘要

Handwriting recognition requires tools and techniques that recognize complex character patterns and represent imprecise, common-sense knowledge about the general appearance of characters, words and phrases. Neural networks and fuzzy logic are complementary tools for solving such problems. Neural networks, which are highly nonlinear and highly interconnected for processing imprecise information, can finely approximate complicated decision boundaries. Fuzzy set methods can represent degrees of truth or belonging. Fuzzy logic encodes imprecise knowledge and naturally maintains multiple hypotheses that result from the uncertainty and vagueness inherent in real problems. By combining the complementary strengths of neural and fuzzy approaches into a hybrid system, we can attain an increased recognition capability for solving handwriting recognition problems. This article describes the application of neural and fuzzy methods to three problems: recognition of handwritten words; recognition of numeric fields; and location of handwritten street numbers in address images.
机译:手写识别需要工具和技术来识别复杂的字符模式,并代表有关字符,单词和短语的一般外观的不精确的常识知识。神经网络和模糊逻辑是解决此类问题的补充工具。高度非线性和高度互连以处理不精确信息的神经网络可以很好地近似复杂的决策边界。模糊集方法可以表示真实度或归属度。模糊逻辑对不精确的知识进行编码,并自然保留了由实际问题中固有的不确定性和模糊性导致的多个假设。通过将神经方法和模糊方法的互补优势结合到一个混合系统中,我们可以获得解决手写识别问题的增强识别能力。本文介绍了神经和模糊方法在三个问题上的应用:手写单词的识别;识别数字字段;地址图像中手写街道编号的位置和位置。

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