Adaptive total variation denoising based on difference curvature

作者:

Highlights:

摘要

Image denoising methods based on gradient dependent regularizers such as Rudin et al.’s total variation (TV) model often suffer the staircase effect and the loss of fine details. In order to overcome such drawbacks, this paper presents an adaptive total variation method based on a new edge indicator, named difference curvature, which can effectively distinguish between edges and ramps. With adaptive regularization and fidelity terms, the new model has the following properties: at object edges, the regularization term is approximate to the TV norm in order to preserve the edges, and the weight of the fidelity term is large in order to preserve details; in flat and ramp regions, the regularization term is approximate to the L2 norm in order to avoid the staircase effect, and the weight of the fidelity term is small in order to strongly remove the noise. Comparative results on both synthetic and natural images demonstrate that the new method can avoid the staircase effect and better preserve fine details.

论文关键词:Image denoise,Total variation,Difference curvature,Staircase effect,Loss of details

论文评审过程:Received 21 July 2007, Revised 11 May 2008, Accepted 20 April 2009, Available online 5 May 2009.

论文官网地址:https://doi.org/10.1016/j.imavis.2009.04.012