A Multilevel Text-Line Segmentation Framework for Handwritten Historical Documents

Ines Ben Messaoud, H. Amiri, H. E. Abed, V. Märgner
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引用次数: 14

Abstract

Text-line segmentation is considered as a crucial step of document analysis and recognition systems because its output is considered as the input of recognition systems. Due to the reason that the same handwritten image page has different characteristics, we propose in this paper a multilevel segmentation framework for handwritten historical documents. In this framework, one or many segmentation methods are selected according to the input document features. This framework is tested on the IAM historical database (60 images) and on images from the segmentation competition for handwritten document segmentation held at ICFHR 2010. The evaluation of the segmentation framework is based on several evaluation metrics. The tests show that the proposed framework gives promoting results.
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手写体历史文献的多级文本行分割框架
文本行分割被认为是文档分析和识别系统的关键步骤,因为它的输出被认为是识别系统的输入。由于同一手写图像页面具有不同的特征,本文提出了一种针对手写历史文档的多级分割框架。在该框架中,根据输入文档的特征选择一种或多种分割方法。该框架在IAM历史数据库(60张图像)和ICFHR 2010举行的手写文档分割竞赛的图像上进行了测试。分割框架的评价基于几个评价指标。测试结果表明,该框架取得了良好的效果。
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