Learning compatibility coefficients for relaxation labeling processes (1994)
| Venue: | IEEE Trans. Pattern Anal. Machine Intell |
| Citations: | 33 - 5 self |
BibTeX
@ARTICLE{Pelillo94learningcompatibility,
author = {Marcello Pelillo and Mario Refice},
title = {Learning compatibility coefficients for relaxation labeling processes},
journal = {IEEE Trans. Pattern Anal. Machine Intell},
year = {1994},
pages = {933--945}
}
Years of Citing Articles
OpenURL
Abstract
Abstract-Relaxation labeling processes have been widely used in many different domains including image processing, pattern recognition, and artificial intelligence. They are iterative procedures that aim at reducing local ambiguities and achieving global consistency through a parallel exploitation of contextual information, which is quantitatively expressed in terms of a set of “compatibility coefficients. ” The problem of determining compatibility coefficients has received a considerable attention in the past and many heuristic, statistical-based methods have been suggested. In this paper, we propose a rather different viewpoint to solve this problem: we derive them attempting to optimize the performance of the relaxation algorithm over a sample of training data; no statistical interpretation is given: compatibility coefficients are simply interpreted as real numbers, for which performance is optimal. Experimental results over a novel application of relaxation are given, which prove the effectiveness of the proposed approach. Index Terms- Compatibility coefficients, constraint satisfaction, gradient projection, learning, neural networks, nonlinear







