Publication Date:
2000
abstract:
Image deblurring and denoising are formulated as the minimization of an energy function in which a line process is implicity referred through a novel discontinuity-adaptive stabilizer. This stabilizer depends on a parameter, called temperature, which is related to the threshold for the creation of intensity discontinuities (edges). The solution is computed using a GNC-like algorithm that minimizes in sequence the energy function at decreasing values of the temperature. We show that this allows for a coarse-to-fine recovery of edges of decreasing width, while smoothing off the noise. Furthermore, the need for a fine tuning of the regularization an threshold parameters is significantly relaxed. As a further advantage with respect to the most edge-preserving stabilizers, the method is also flexible for the introduction of self-interactions between lines, in order to express various constraints on the configurations of the edge field, without any increase in the computational cost.
Iris type:
01.01 Articolo in rivista
Keywords:
Image processing; Image denoising; Image processing and computer vision
List of contributors:
Tonazzini, Anna
Published in: