Sciweavers

SIP
2007

Adaptive large scale artifact reduction in edge-based image super-resolution

14 years 1 months ago
Adaptive large scale artifact reduction in edge-based image super-resolution
— The goal of multi-frame image super-resolution is to use information from low-resolution images to construct highresolution images. Current multi-frame image super-resolution methods are highly sensitive to prominent large scale artifacts found within the low-resolution images, leading to reduced image quality. This paper presents a novel adaptive approach to large scale artifact reduction in multi-frame image super-resolution. The proposed method adaptively selects information from the low-resolution images such that prominent large scale artifacts are rejected during the reconstruction of the high-resolution image. In addition, an efficient super-resolution algorithm based on the proposed artifact reduction method and edge-adaptive constraint relaxation is introduced. Experimental results show that the proposed super-resolution algorithm based on the proposed artifact reduction method improves the perceptual quality of the resultant high-resolution image both quantitatively and ...
Alexander Wong, William Bishop
Added 30 Oct 2010
Updated 30 Oct 2010
Type Conference
Year 2007
Where SIP
Authors Alexander Wong, William Bishop
Comments (0)