OCR Error Correction Using Character Correction and Feature-Based Word Classification

Ido Kissos, N. Dershowitz
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引用次数: 67

Abstract

This paper explores the use of a learned classifier for post-OCR text correction. Experiments with the Arabic language show that this approach, which integrates a weighted confusion matrix and a shallow language model, improves the vast majority of segmentation and recognition errors, the most frequent types of error on our dataset.
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基于字符校正和特征词分类的OCR纠错
本文探讨了使用学习分类器进行后ocr文本校正。阿拉伯语的实验表明,这种方法集成了加权混淆矩阵和浅语言模型,改善了绝大多数分割和识别错误,这是我们数据集中最常见的错误类型。
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