高性能泰英双语OCR系统的实现

S. Tangwongsan, Buntida Suvacharakulton
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引用次数: 2

摘要

本文提出了一种高性能的泰语和英语文本双语OCR系统。由于泰语和英语语言的复杂性,第一阶段是通过使用几何属性来区分不同区域内的语言。第二阶段是字符识别过程,其中所开发的技术包括特征提取器和分类器。在特征提取中,对减薄后的字符图像进行分析和分组。接下来,分类器将分两个步骤进行识别:粗糙层,然后是在决策树的指导下进行精细层。为了获得更好的结果,最后阶段尝试使用字典查找来检查整体性能中的准确性改进。为了验证该系统的有效性,对141页28万字以上的打印文档进行了一系列实验,结果表明,该系统在泰语单语、英语单语和双语文档中的平均准确率分别达到100%、98.18%和99.85%。在最后阶段,通过词典查询,系统在双语文档中的准确率达到了预期的99.98%。
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Realization of a high performance bilingual OCR system for Thai-English printed documents
This paper presents a high performance bilingual OCR system for printed Thai and English text. With the complex nature of both Thai and English languages, the first stage is to identify languages within different zones by using geometric properties for differentiation. The second stage is the process of character recognition, in which the technique developed includes a feature extractor and a classifier. In the feature extraction, the thinned character image is analyzed and categorized into groups. Next, the classifier will take in two steps of recognition: the coarse level, followed by the fine level with a guide of decision trees. As to obtain an even better result, the final stage attempts to make use of dictionary look-up as to check for accuracy improvement in an overall performance. For verification, the system is tested by a series of experiments with printed documents in 141 pages and over 280,000 characters, the result shows that the system could obtain an accuracy of 100% in Thai monolingual, 98.18% in English monolingual, and 99.85% in bilingual documents on the average. In the final stage with a dictionary look-up, the system could yield a better accuracy of improvement up to 99.98% in bilingual documents as expected.
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