首页> 外文期刊>International Journal of Pattern Recognition and Artificial Intelligence >MULTIPLE CLASSIFIER SYSTEMS IN OFFLINE HANDWRITTEN WORD RECOGNITION — ON THE INFLUENCE OF TRAINING SET AND VOCABULARY SIZE
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MULTIPLE CLASSIFIER SYSTEMS IN OFFLINE HANDWRITTEN WORD RECOGNITION — ON THE INFLUENCE OF TRAINING SET AND VOCABULARY SIZE

机译:离线手写单词识别中的多个分类系统—训练集和词汇量的影响

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摘要

Handwritten text recognition is one of the most difficult problems in the field of pattern recognition. Recently, a number of classifier creation methods, known as ensemble methods, have been proposed in the field of machine learning. It has been shown that these methods are able to substantially improve recognition performance in complex classification tasks. In this paper we examine the influence of the vocabulary size and the number of training samples on the performance of three ensemble methods in the context of handwritten word recognition. The experiments were conducted with two different offline hidden Markov model based handwritten word recognizers.
机译:手写文本识别是模式识别领域中最困难的问题之一。最近,在机器学习领域中提出了许多分类器创建方法,称为集成方法。已经表明,这些方法能够显着提高复杂分类任务中的识别性能。在本文中,我们研究了在手写单词识别的情况下,词汇量和训练样本数对三种集成方法的性能的影响。实验是使用两种不同的基于离线隐马尔可夫模型的手写单词识别器进行的。

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