Weisheng DongGuangming ShiLei ZhangXiaolin Wu
The reconstruction of a high resolution (HR) image from its low resolution (LR) counterpart is a challenging problem. The recently developed sparse representation (SR) techniques provide new solutions to this inverse problem by introducing the l1-norm sparsity prior into the super-resolution reconstruction process. In this paper, we present a new SR based image super-resolution by optimizing the objective function under an adaptive sparse domain and with the nonlocal regularization of the HR images. The adaptive sparse domain is estimated by applying principal component analysis to the grouped nonlocal similar image patches. The proposed objective function with nonlocal regularization can be efficiently solved by an iterative shrinkage algorithm. The experiments on natural images show that the proposed method can reconstruct HR images with sharp edges from degraded LR images.
Sundaresh RamJeffrey J. Rodrı́guez
Yeda ZhangYuan ZhouAihua WangQiong WuChunping Hou
Na QiYunhui ShiXiaoyan SunWenpeng DingBaocai Yin