A learning algorithm for structured character pattern representation used in online recognition of handwritten Japanese characters

Akihito Kitadai, M. Nakagawa
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引用次数: 12

Abstract

This paper describes a prototype learning algorithm for structured character pattern representation with common sub-patterns shared among multiple character templates for online recognition of handwritten Japanese characters. Although prototype learning algorithms have been proved useful for an unstructured set of features, they have not been presented for structured or hierarchical pattern representation. In this paper, we present cost-free parallel translation without rotation of sub-patterns that negates their location distributions and normalization that reflects feature distributions in raw patterns to the sub-pattern prototypes, and then show that a prototype learning algorithm can be applied to the structured character pattern representation with significant effect.
结构化字符模式表示的学习算法,用于手写日文的在线识别
本文提出了一种基于多字符模板共享公共子模式的结构化字符模式表示的原型学习算法,用于手写日文的在线识别。尽管原型学习算法已被证明对非结构化的特征集很有用,但它们还没有被用于结构化或分层模式表示。本文提出了否定子模式位置分布的无成本并行平移和将原始模式中的特征分布反映到子模式原型中的归一化方法,并证明了原型学习算法可以应用于结构化字符模式表示,效果显著。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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