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Boosting Optical Character Recognition: A Super-Resolution Approach (1506.02211v1)

Published 7 Jun 2015 in cs.CV

Abstract: Text image super-resolution is a challenging yet open research problem in the computer vision community. In particular, low-resolution images hamper the performance of typical optical character recognition (OCR) systems. In this article, we summarize our entry to the ICDAR2015 Competition on Text Image Super-Resolution. Experiments are based on the provided ICDAR2015 TextSR dataset and the released Tesseract-OCR 3.02 system. We report that our winning entry of text image super-resolution framework has largely improved the OCR performance with low-resolution images used as input, reaching an OCR accuracy score of 77.19%, which is comparable with that of using the original high-resolution images 78.80%.

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Authors (5)
  1. Chao Dong (168 papers)
  2. Ximei Zhu (1 paper)
  3. Yubin Deng (7 papers)
  4. Chen Change Loy (288 papers)
  5. Yu Qiao (563 papers)
Citations (43)

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