草书笔划排序手写文本文件识别

S. Panwar, N. Nain
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引用次数: 1

摘要

文本分割可以定义为将手写文本文档的图像分割成单行、单字、单字对应的小块的过程。这是一项非常具有挑战性的任务,因为在手写文档中,弯曲的文本线经常以不同的倾斜角度出现。在对手写文本文档进行词或笔画的分词后,也就是在文本文档中找到连接的成分,我们需要根据文档对笔画进行排序,以保持文档的意思。在本文中,我们使用自下而上的分组方法进行分割。我们使用了一种新颖的连接强度参数和深度优先搜索方法,从给定文档的完整连接组件中提取同一行的连接组件。连接组件的确切序列存储在包含组件标签的顺序向量中。提出的草书笔划排序技术在一个基准IAM数据库上进行了实现和测试,结果令人鼓舞。定量分析也表明,与现有的分割技术相比,这种方法取得了更好的效果,并且克服了丘陵和山谷写作风格以及重叠和触线所遇到的问题。所提出的测序技术的准确度为98%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cursive stroke sequencing for handwritten text documents recognition
Text segmentation can be defined as the process of splitting the images of handwritten text document into pieces corresponding to single lines, words and character. This is a very challenging task because in handwritten documents curved text lines appear frequently with different skew and slant angles. After segmentation of word or stroke, also defined as finding the connected components in handwritten text document, we have to sequence the strokes according to the document so that the meaning of the document is preserved. In this paper, We use bottom up grouping approach for segmentation. We have used a novel connectivity strength parameter with depth first search approach for extraction of connected components of the same line from complete connected components of the given document. The exact sequence of connected components is stored in the sequential vector which contains the label of the components. The proposed cursive stroke sequencing technique is implemented and tested on a benchmark IAM database providing encouraging results. Quantitative analysis also shows that this approach gives better results compared to existing segmentation techniques and overcomes the problems encountered in Hill-and-dale writing styles and overlapped and touched lines. The accuracy of the proposed sequencing technique is 98%.
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