Binarization effects on results of text-line segmentation methods applied on historical documents

Ines Ben Messaoud, H. Amiri, H. E. Abed, V. Märgner
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引用次数: 2

Abstract

Results of document scanning are digital images. Image processing is considered as bidimensional signal processing. Such images are the input of document analysis and recognition systems. Information extraction is one objective of document analysis and recognition systems. Textline extraction is a crucial step of such systems because its output is considered as the input of the recognition step. Most segmentation methods take as input binary images, which explains that binarization methods can affect segmentation results. We study in this paper how does the choice of binarization minimally affects the results of text-line segmentation methods? Several evaluation metrics are used for the comparison between segmentation results. The proposed approach is tested using the benchmarking databases IAM (about 556 images) and IAM historical (about 60 images). The results show that binarization affects the detection rate (DR) and the recognition accuracy (RA) metrics for segmentation evaluation.
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二值化对历史文献文本行分割结果的影响
文档扫描的结果是数字图像。图像处理被认为是二维信号处理。这些图像是文件分析和识别系统的输入。信息提取是文档分析和识别系统的目标之一。文本线提取是该系统的关键步骤,因为它的输出被认为是识别步骤的输入。大多数分割方法以二值图像作为输入,这说明二值化方法会影响分割结果。我们在本文中研究了二值化的选择如何最小程度地影响文本行分割方法的结果。几个评价指标用于分割结果之间的比较。使用基准数据库IAM(大约556个图像)和IAM历史(大约60个图像)对所提出的方法进行了测试。结果表明,二值化影响分割评价的检测率(DR)和识别精度(RA)指标。
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