Retrieval methods for English-text with missrecognized OCR characters

Manabu Ohta, A. Takasu, J. Adachi
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引用次数: 38

Abstract

This paper presents three probabilistic text retrieval methods designed to carry out a full-text search of English documents containing OCR errors. By searching for any query term on the premise that there are errors in the recognized text, the methods presented can tolerate such errors, and therefore costly manual post-editing is not required after OCR recognition. In the applied approach, confusion matrices are used to store characters which are likely to be interchanged when a particular character is missrecognized, and the respective probability of each occurrence. Moreover, a 2-gram matrix is used to store probabilities of character connection, i.e., which letter is likely to come after another. Multiple search terms are generated for an input query term by making reference to confusion matrices, after which a full-text search is run for each search term. The validity of retrieved terms is determined based on error-occurrence and character connection probabilities. The performance of these methods is experimentally evaluated by determining retrieval effectiveness, i.e., by calculating recall and precision rates. Results indicate marked improvement in comparison with exact matching.
英文文本OCR字符识别错误的检索方法
本文提出了三种概率文本检索方法,用于对包含OCR错误的英文文档进行全文检索。通过在识别文本中存在错误的前提下搜索任何查询项,所提出的方法可以容忍这种错误,因此在OCR识别后不需要进行昂贵的人工后期编辑。在应用方法中,混淆矩阵用于存储当某个特定字符被错误识别时可能互换的字符,以及每个字符各自出现的概率。此外,一个2克矩阵用于存储字符连接的概率,即哪个字母可能出现在另一个字母之后。通过引用混淆矩阵为输入查询词生成多个搜索词,然后为每个搜索词运行全文搜索。根据错误发生概率和字符连接概率确定检索词的有效性。这些方法的性能是通过实验来评估检索效率,即通过计算召回率和准确率。结果表明,与精确匹配相比,有明显的改善。
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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