Text Detection in Tibetan Ancient Books: A Benchmark

Xiangxiang Zhi, Dingguo Gao, Qijun Zhao, Shuiwang Li, Ci Qu
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Abstract

The digitization of Tibetan ancient books is of great significance to the preservation of Tibetan culture. This problem involves two tasks: Tibetan text detection and Tibetan text recognition. The former is undoubtedly crucial to automatic Tibetan text recognition. However, there are few works on Tibetan text detection, and lack of training data has always been a problem, especially for deep learning methods which require massive training data. In this paper, we introduce the TxTAB dataset for evaluating text detection methods in Tibetan ancient books. The dataset is established based upon 202 treasured handwritten ancient Tibetan text images and is densely annotated with a multi-point annotation method without limiting the number of points. This is a challenging dataset with good diversity. It contains blurred images, gray and color images, the text of different sizes, the text of different handwriting styles, etc. An extensive experimental evaluation of 3 state-of-the-art text detection algorithms on TxTAB is presented with detailed analysis, and the results demonstrate that there is still a big room for improvements particularly for detecting Tibetan text in images of low quality.
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藏文古籍文本检测:一个标杆
西藏古籍数字化对西藏文化的保护具有重要意义。该问题涉及两个任务:藏文文本检测和藏文文本识别。前者对于自动藏文识别无疑是至关重要的。然而,藏文文本检测方面的工作很少,训练数据的缺乏一直是一个问题,特别是对于需要大量训练数据的深度学习方法。本文引入TxTAB数据集,对藏文古籍文本检测方法进行评价。该数据集基于202幅珍贵的藏文古手写体图像建立,采用不限制点数的多点标注方法进行密集标注。这是一个具有良好多样性的具有挑战性的数据集。它包含模糊图像,灰度和彩色图像,不同大小的文字,不同笔迹风格的文字等。对TxTAB上3种最先进的文本检测算法进行了广泛的实验评估,并进行了详细的分析,结果表明,特别是在低质量图像中的藏文检测方面,仍有很大的改进空间。
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