自然场景OCR误差校正的加权有限状态框架

Richard Beaufort, C. Mancas-Thillou
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引用次数: 46

摘要

随着廉价相机市场的不断扩大,自然场景文本的高效处理势在必行。一些工作涉及图像中的文本检测,而最近的工作则指出了文本提取和识别的挑战。我们在此提出一种OCR校正系统来处理传统的识别器错误问题,也可以处理自然场景图像的错误,如剪切字符、艺术展示、不完整的句子(出现在广告中)和词汇外(OOV)单词(首字母缩略词)等。主要算法基于有限状态机(FSMs)来处理学习到的OCR混淆、大写/重音字母和词典查找。此外,由于OCR不被视为黑盒,因此考虑了多个输出以混合识别和校正步骤。在自然场景词的公共数据库的基础上,详细的结果以及未来的工作。
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A Weighted Finite-State Framework for Correcting Errors in Natural Scene OCR
With the increasing market of cheap cameras, natural scene text has to be handled in an efficient way. Some works deal with text detection in the image while more recent ones point out the challenge of text extraction and recognition. We propose here an OCR correction system to handle traditional issues of recognizer errors but also the ones due to natural scene images, i.e. cut characters, artistic display, incomplete sentences (present in advertisements) and out- of-vocabulary (OOV) words such as acronyms and so on. The main algorithm bases on finite-state machines (FSMs) to deal with learned OCR confusions, capital/accented letters and lexicon look-up. Moreover, as OCR is not considered as a black box, several outputs are taken into account to intermingle recognition and correction steps. Based on a public database of natural scene words, detailed results are also presented along with future works.
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