基于视觉词袋范式的文档图像手写体与机印体文本分离

Konstantinos Zagoris, I. Pratikakis, A. Antonacopoulos, B. Gatos, N. Papamarkos
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引用次数: 27

摘要

在许多类型的文件中,从表格到档案文件和带有注释的书籍,机器打印和手写的文本可能出现在相同的文件图像中,这在数字化和识别管道中引起了重大问题。因此,在对每种文本应用不同的识别方法之前,有必要将两种类型的文本分开。本文提出了一种新的方法,利用视觉词袋范式(BoVW)来识别和分离手写文本和机器打印文本。最初,在文档图像中检测感兴趣的块。对于每个块,一个描述符是基于BoVW计算的。通过支持向量机分类器将块的最终特征描述为手写,机器打印或噪声。通过使用一致的评估方法,将有意义的度量与新的数据集结合起来,表明了所提出方法的良好性能。
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Handwritten and Machine Printed Text Separation in Document Images Using the Bag of Visual Words Paradigm
In a number of types of documents, ranging from forms to archive documents and books with annotations, machine printed and handwritten text may be present in the same document image, giving rise to significant issues within a digitisation and recognition pipeline. It is therefore necessary to separate the two types of text before applying different recognition methodologies to each. In this paper, a new approach is proposed which strives towards identifying and separating handwritten from machine printed text using the Bag of Visual Words paradigm (BoVW). Initially, blocks of interest are detected in the document image. For each block, a descriptor is calculated based on the BoVW. The final characterization of the blocks as Handwritten, Machine Printed or Noise is made by a Support Vector Machine classifier. The promising performance of the proposed approach is shown by using a consistent evaluation methodology which couples meaningful measures along with a new dataset.
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