结合基于模型和判别分类器:在手写体字符识别中的应用

L. Prevost, C. Michel-Sendis, A. Moises, L. Oudot, M. Milgram
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引用次数: 32

摘要

手写识别是一个非常复杂的分类问题,通常在预处理阶段或分类阶段采用多种分类方法进行协作。本文提出了一种新颖的两阶段识别器。第一阶段是基于模型的分类器,它存储一组详尽的字符模型。第二阶段是判别分类器,分离最模糊的类对。这种混合体系结构基于这样一种思想,即正确的类几乎系统地属于第一个分类器发现的两个更相关的类。在Unipen数据库上的实验表明,在62个类的识别问题上提高了30%。
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Combining model-based and discriminative classifiers: application to handwritten character recognition
Handwriting recognition is such a complex classification problem that it is quite usual now to make co-operate several classification methods at the pre-processing stage or at the classification stage. In this paper, we present an original two stages recognizer. The first stage is a model-based classifier that stores an exhaustive set of character models. The second stage is a discriminative classifier that separates the most ambiguous pairs of classes. This hybrid architecture is based on the idea that the correct class almost systematically belongs to the two more relevant classes found by the first classifier. Experiments on the Unipen database show a 30% improvement on a 62 class recognition problem.
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