阿拉伯语OCR系统开发的综合数据

V. Märgner, M. Pechwitz
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引用次数: 43

摘要

提出了一种用于开发或评价阿拉伯语文字识别系统(OCR)的自动合成数据库的系统。该系统无需扫描印刷纸张即可工作。首先,阿拉伯文本必须使用标准排版系统进行排版。其次,自动生成文档的无噪声位图和相应的ground truth (GT);最后,可以将图像失真叠加到字符或单词图像上,以模拟预期应用程序的预期真实世界噪声。介绍了所有必要的模块,并给出了一些示例。由于阿拉伯语的特殊特点,如从右向左印刷、许多变音符点、字符高度的变化以及与书写线的相对位置的变化,提出了一些特殊问题。该合成数据集用于训练和测试基于隐马尔可夫模型(HMM)的识别系统,该系统最初是为德文草书开发的,用于识别阿拉伯印刷文字。给出了不同合成数据集的识别结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Synthetic data for Arabic OCR system development
A system for the automatic generation of synthetic databases for the development or evaluation of Arabic word or text recognition systems (Arabic OCR) is presented. The proposed system works without any scanning of printed paper. Firstly Arabic text has to be typeset using a standard typesetting system. Secondly a noise-free bitmap of the document and the corresponding ground truth (GT) is automatically generated. Finally, an image distortion can be superimposed to the character or word image to simulate the expected real world noise of the intended application. All necessary modules are presented together with some examples. Special problems caused by specific features of Arabic, such as printing from right to left, many diacritical points, variation in the height of characters, and changes in the relative position to the writing line, are suggested. The synthetic data set was used to train and test a recognition system based on hidden Markov model (HMM), which was originally developed for German cursive script, for Arabic printed words. Recognition results with different synthetic data sets are presented.
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