Correcting English text using PPM models

W. Teahan, S. Inglis, J. Cleary, Geoffrey Holmes
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引用次数: 30

Abstract

An essential component of many applications in natural language processing is a language modeler able to correct errors in the text being processed. For optical character recognition (OCR), poor scanning quality or extraneous pixels in the image may cause one or more characters to be mis-recognized, while for spelling correction, two characters may be transposed, or a character may be inadvertently inserted or missed out, This paper describes a method for correcting English text using a PPM model. A method that segments words in English text is introduced and is shown to be a significant improvement over previously used methods. A similar technique is also applied as a post-processing stage after pages have been recognized by a state-of-the-art commercial OCR system. We show that the accuracy of the OCR system can be increased from 96.3% to 96.9%, a decrease of about 14 errors per page.
使用PPM模型校正英文文本
自然语言处理中许多应用程序的一个重要组成部分是能够纠正正在处理的文本中的错误的语言建模器。对于光学字符识别(OCR),扫描质量差或图像中多余的像素可能会导致一个或多个字符被错误识别,而对于拼写纠正,可能会导致两个字符调换,或者无意中插入或遗漏一个字符。本文描述了一种使用PPM模型纠正英语文本的方法。介绍了一种对英语文本中的词进行分词的方法,该方法比以前使用的方法有了显著的改进。类似的技术也应用于页面被最先进的商业OCR系统识别后的后处理阶段。我们的研究表明,OCR系统的准确率可以从96.3%提高到96.9%,每页减少约14个错误。
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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