Visible to the public An \#8467;1/2-BTV regularization algorithm for super-resolution

TitleAn \#8467;1/2-BTV regularization algorithm for super-resolution
Publication TypeConference Paper
Year of Publication2015
AuthorsLiu, Weijian, Chen, Zeqi, Chen, Yunhua, Yao, Ruohe
Conference Name2015 4th International Conference on Computer Science and Network Technology (ICCSNT)
Date Publisheddec
KeywordsAdaptation models, Bilateral Total Variation, Histograms, Image edge detection, Image reconstruction, ℓ1/2 regularizer, Minimization, pubcrawl170111, Regularization, Spatial resolution, Super-resolution
Abstract

In this paper, we propose a novelregularization term for super-resolution by combining a bilateral total variation (BTV) regularizer and a sparsity prior model on the image. The term is composed of the weighted least squares minimization and the bilateral filter proposed by Elad, but adding an l1/2 regularizer. It is referred to as l1/2-BTV. The proposed algorithm serves to restore image details more precisely and eliminate image noise more effectively by introducing the sparsity of the l1/2 regularizer into the traditional bilateral total variation (BTV) regularizer. Experiments were conducted on both simulated and real image sequences. The results show that the proposed algorithm generates high-resolution images of better quality, as defined by both de-noising and edge-preservation metrics, than other methods.

DOI10.1109/ICCSNT.2015.7490963
Citation Keyliu_8467;1/2-btv_2015