Why multiple document image binarizations improve OCR

The Hip Pub Date : 2013-08-24 DOI:10.1145/2501115.2501126
William B. Lund, Douglas J. Kennard, Eric K. Ringger
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引用次数: 11

Abstract

Our previous work has shown that the error correction of optical character recognition (OCR) on degraded historical machine-printed documents is improved with the use of multiple information sources and multiple OCR hypotheses including from multiple document image binarizations. The contributions of this paper are in demonstrating how diversity among multiple binarizations makes those improvements to OCR accuracy possible. We demonstrate the degree and breadth to which the information required for correction is distributed across multiple binarizations of a given document image. Our analysis reveals that the sources of these corrections are not limited to any single binarization and that the full range of binarizations holds information needed to achieve the best result as measured by the word error rate (WER) of the final OCR decision. Even binarizations with high WERs contribute to improving the final OCR. For the corpus used in this research, fully 2.68% of all tokens are corrected using hypotheses not found in the OCR of the binarized image with the lowest WER. Further, we show that the higher the WER of the OCR overall, the more the corrections are distributed among all binarizations of the document image.
为什么多个文档图像二值化可以改善OCR
我们之前的工作表明,使用多个信息源和多个OCR假设(包括多个文档图像二值化)可以改善退化历史机器打印文档的光学字符识别(OCR)纠错。本文的贡献在于展示了多重二值化之间的多样性如何使OCR精度的提高成为可能。我们演示了在给定文档图像的多个二值化中分布校正所需信息的程度和广度。我们的分析表明,这些修正的来源并不局限于任何单一的二值化,而且所有的二值化都包含了通过最终OCR决策的单词错误率(WER)来实现最佳结果所需的信息。即使具有高wer的二值化也有助于提高最终的OCR。对于本研究中使用的语料库,使用最低WER的二值化图像的OCR中没有发现的假设来纠正所有标记的2.68%。此外,我们表明OCR的整体WER越高,文档图像的所有二值化之间的更正分布越多。
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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