AB - Reconstruction- and example-based super-resolution (SR) methods are promising for restoring a high-resolution (HR) image from low-resolution (LR) image(s). Under large magnification, reconstruction-based methods usually fail to hallucinate visual details while example-based methods sometimes introduce unexpected details. Given a generic LR image, to reconstruct a photo-realistic SR image and to suppress artifacts in the reconstructed SR image, we introduce a multi-scale dictionary to a novel SR method that simultaneously integrates local and non-local priors. The local prior suppresses artifacts by using steering kernel regression to predict the target pixel from a small local area. The non-local prior enriches visual details by taking a weighted average of a large neighborhood as an estimate of the target pixel. Essentially, these two priors are complementary to each other. Experimental results demonstrate that the proposed method can produce high quality SR recovery both quantitatively and perceptually. © 2012 IEEE. AU - Zhang, K AU - Gao, X AU - Tao, D AU - Li, X DA - 2012/10/01 DO - 10.1109/CVPR.2012.6247791 EP - 1121 JO - Proceedings of the IEEE Computer Society Conference on Computer Vision and Pattern Recognition PY - 2012/10/01 SP - 1114 TI - Multi-scale dictionary for single image super-resolution Y1 - 2012/10/01 Y2 - 2024/03/28 ER -