4.7 Article

A Statistical Prediction Model Based on Sparse Representations for Single Image Super-Resolution

Journal

IEEE TRANSACTIONS ON IMAGE PROCESSING
Volume 23, Issue 6, Pages 2569-2582

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TIP.2014.2305844

Keywords

Dictionary learning; feedforward neural networks; MMSE estimation; nonlinear prediction; single image super-resolution; sparse representations; statistical models; restricted Boltzmann machine; zooming deblurring

Funding

  1. European Research Council under EU
  2. ERC [320649]
  3. Intel Collaborative Research Institute for Computational Intelligence
  4. European Research Council (ERC) [320649] Funding Source: European Research Council (ERC)

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We address single image super-resolution using a statistical prediction model based on sparse representations of low-and high-resolution image patches. The suggested model allows us to avoid any invariance assumption, which is a common practice in sparsity-based approaches treating this task. Prediction of high resolution patches is obtained via MMSE estimation and the resulting scheme has the useful interpretation of a feedforward neural network. To further enhance performance, we suggest data clustering and cascading several levels of the basic algorithm. We suggest a training scheme for the resulting network and demonstrate the capabilities of our algorithm, showing its advantages over existing methods based on a low-and high-resolution dictionary pair, in terms of computational complexity, numerical criteria, and visual appearance. The suggested approach offers a desirable compromise between low computational complexity and reconstruction quality, when comparing it with state-of-the-art methods for single image super-resolution.

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