Title :
Graduated nonconvexity by functional focusing
Author_Institution :
3D Lab., Sch. of Dentistry, Copenhagen, Denmark
fDate :
5/1/1997 12:00:00 AM
Abstract :
Reconstruction of noise-corrupted surfaces may be stated as a (in general nonconvex) functional minimization problem. For functionals with quadratic data term, this paper addresses the criteria for such functionals to be convex, and the variational approach for minimization. I present two automatic and general methods of approximation with convex functionals based on Gaussian convolution. They are compared to the Blake-Zisserman graduated nonconvexity (GNC) method (1987) and Bilbro et al. (1992) and Geiger and Girosi´s (1991) mean field annealing (MFA) of a weak membrane
Keywords :
approximation theory; convolution; image reconstruction; minimisation; noise; variational techniques; Gaussian convolution; convexity criteria; functional focusing; functional minimization problem; graduated nonconvexity; noise-corrupted surface reconstruction; quadratic data term; variational approach; weak membrane; Additive noise; Annealing; Bayesian methods; Biomembranes; Convolution; Delta modulation; Erbium; Gaussian noise; Image reconstruction; Surface reconstruction;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on