手写体词识别的多分类器组合

Wenwei Wang, A. Brakensiek, G. Rigoll
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引用次数: 42

摘要

由于人类笔迹的形状变化很大,使用单一分类器对草书手写单词的识别精度很难令人满意。在本文中,我们引入了一个框架来组合多个分类器的结果,并提出了一种直观的运行时加权意见池组合方法来识别具有大词汇量的草书手写体单词。单个分类器在运行时动态地进行评估。最后的组合是根据他们的本地表现加权的。对于开放词汇识别任务,我们使用ROVER算法来组合每个分类器提供的不同字符串。实验结果表明,该方法具有较好的识别性能,显著降低了相对错误率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Combination of multiple classifiers for handwritten word recognition
Due to large shape variations in human handwriting, recognition accuracy of cursive handwritten word is hardly satisfying using a single classifier. In this paper we introduce a framework to combine results of multiple classifiers and present an intuitive run-time weighted opinion pool combination approach for recognizing cursive handwritten words with a large size vocabulary. The individual classifiers are evaluated run-time dynamically. The final combination is weighted according to their local performance. For an open vocabulary recognition task, we use the ROVER algorithm to combine the different strings of characters provided by each classifier. Experimental results for recognizing cursive handwritten words demonstrate that our new approach achieves better recognition performance and reduces the relative error rate significantly.
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