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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Statistical script independent word spotting in offline handwritten documents
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Statistical script independent word spotting in offline handwritten documents

机译:统计脚本独立单词脱机手写文档中的单词发现

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摘要

We propose a statistical script independent line based word spotting framework for offline handwritten documents based on Hidden Markov Models. We propose and compare an exhaustive study of filler models and background models for better representation of background or non-keyword text. The candidate keywords are pruned in a two stage spotting framework using the character based and lexicon based background models. The system deals with large vocabulary without the need for word or character segmentation. The script independent word spotting system is evaluated on a mixed corpus of public dataset from several scripts such as IAM for English, AMA for Arabic and LAW for Devanagari.
机译:针对基于隐马尔可夫模型的离线手写文档,我们提出了一种基于统计脚本的基于行的单词发现框架。我们提出并比较了填充模型和背景模型的详尽研究,以更好地表示背景或非关键字文本。使用基于字符和基于词典的背景模型在两个阶段的发现框架中修剪候选关键字。该系统无需词汇或字符分割即可处理大量词汇。独立于脚本的单词发现系统是根据几种脚本(例如,针对英语的IAM,针对阿拉伯语的AMA和针对Devanagari的LAW)的公共数据集的混合语料库进行评估的。

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