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An Example-based Prior Model for Text Image Super-resolution
Seoul, Korea August 31-September 01
DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/ICDAR.2005.49Eighth International Conference on Do ...
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Jangkyun Park, Division of Computer Science, KAIST, Korea
Younghee Kwon, Division of Computer Science, KAIST, Korea
Jin Hyung Kim, Division of Computer Science, KAIST, Korea
This paper presents a prior model for text image superresolution in the Bayesian framework. In contrast to generic image super-resolution task, super-resolution of text images can be benefited from strong prior knowledge of the image class: Firstly, low-resolution images are assumed to be generated from a highresolution image by a sort of degradation which can be grasped through example pairs of the original and the corresponding degradation; Secondly, text images are composed of two homogeneous regions, text and background regions. These properties were represented in a Markov Random Field (MRF) framework. Experiments showed that our model is more appropriate to text image super-resolution than the other prior models.
Citation:
Jangkyun Park, Younghee Kwon, Jin Hyung Kim, "An Example-based Prior Model for Text Image Super-resolution," icdar, pp.374-378, Eighth International Conference on Document Analysis and Recognition (ICDAR'05), 2005
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