Layout Analysis of Tibetan Historical Documents Based on Deep Learning

Yong Cuo, N. Tashi, Zhengzhen Liu, Qiuhua Wei, Luosang Gadeng, Gama Trashi
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Abstract

Tibetan historical document are vast, second in quantity only to Chinese historical document in China, and they are considered a treasure of Chinese culture. The digital protection and utilization of Tibetan literature resources is a hot topic in the field of literature digitization. Layout analysis is an important basic step in the digitization of historical document. Tibetan historical document have a complex layout, a variety of graphic and text forms, and diverse backgrounds, all of which have an impact on the layout analysis. We design a method combining deep learning text line detection with rule-based layout analysis to realize layout analysis of Tibetan historical document. This method first conducts text detection through deep learning, then constructs text lines, and finally segments horizontal text regions and vertical text regions by rule analysis to realize the segmentation of the layout. Our self-built datasets with rich sample types show that the proposed method can achieve detection of a variety of layouts with high accuracy and provide reliable text regions for subsequent text recognition, thus offering strong application value.
基于深度学习的藏文历史文献布局分析
藏文历史文献数量庞大,在中国历史文献中仅次于汉语,被认为是中华文化的瑰宝。西藏文献资源的数字化保护与利用是文献数字化领域的热点问题。版面分析是历史文献数字化的重要基础步骤。西藏历史文献版式复杂,图文形式多样,背景多样,这些都对版式分析产生了影响。我们设计了一种结合深度学习文本行检测和基于规则的布局分析的方法来实现藏文历史文献的布局分析。该方法首先通过深度学习进行文本检测,然后构建文本行,最后通过规则分析对水平文本区域和垂直文本区域进行分割,实现布局的分割。我们自建的样本类型丰富的数据集表明,本文方法可以实现对多种布局的高精度检测,并为后续的文本识别提供可靠的文本区域,具有较强的应用价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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