Fast search of a similar patch for self-similarity based image super resolution

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Abstract

In the self-similarity super resolution (SR) approach, similar examples are searched across down-scales in the image pyramid, and the computations of searching similar examples are very heavy. This makes it difficult to work in a real-time way under common software implementation. Therefore, the search process should be further accelerated at an algorithm level. Cauchy-Schwarz inequality has been used previously for fast vector quantization (VQ) encoding. The candidate patches in the search region of SR are analogous to the code-words in the VQ, and Cauchy- Schwarz inequality is exploited to exclude implausible candidate patches early. Consequently, significant acceleration of the similar patch search process is achieved. The proposed method can easily make an optimal trade-off between running speed and visual quality by appropriately configuring the bypass-threshold.

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APA

Yoo, J. S., Choi, J. H., Choi, K. S., Lee, D. Y., Kim, H. Y., & Kim, J. O. (2016). Fast search of a similar patch for self-similarity based image super resolution. In IEICE Transactions on Information and Systems (Vol. E99D, pp. 2194–2198). Maruzen Co., Ltd. https://doi.org/10.1587/transinf.2016EDL8049

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