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An irrelevant variability normalization approach to discriminative training of multi-prototype based classifiers and its applications for online handwritten Chinese character recognition

机译:基于多原型分类器判别训练的不相关变异性归一化方法及其在在线手写汉字识别中的应用

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摘要

This paper presents an irrelevant variability normalization (IVN) approach to jointly discriminative training of feature transforms and multi-prototype based classifier for recognition of online handwritten Chinese characters. A sample separation margin based minimum classification error criterion is adopted in IVN-based training, while an Rprop algorithm is used for optimizing the objective function. For the IVN approach based on piecewise linear transforms, the corresponding recognizer can be made both compact and efficient by using a two-level fast-match tree whose internal nodes coincide with the labels of feature transforms. Furthermore, the IVN system using weighted sum of linear transforms outperforms that based on piecewise linear transforms. The effectiveness of the proposed approach is first confirmed using an in-house developed online Chinese handwriting corpus with a vocabulary of 9306 characters, and then further verified on a standard benchmark database for an online handwritten character recognition task with a vocabulary of 3755 characters.
机译:本文提出了一种不相关的可变性归一化(IVN)方法,用于对特征转换和基于多原型的分类器进行联合判别训练,以识别在线手写汉字。在基于IVN的训练中采用基于样本分离余量的最小分类误差准则,而Rprop算法则用于优化目标函数。对于基于分段线性变换的IVN方法,可以通过使用两级快速匹配树(其内部节点与特征变换的标签一致)来使相应的识别器既紧凑又高效。此外,使用线性变换的加权和的IVN系统的性能优于基于分段线性变换的IVN系统。首先使用内部开发的带有9306个字符的词汇的在线中文手写语料库确认了该方法的有效性,然后在标准基准数据库上进一步验证了具有3755个字符的词汇的在线手写字符识别任务。

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