Title :
A Principled Approach for Coarse-to-Fine MAP Inference
Author :
Zach, Christopher
Author_Institution :
Microsoft Res. Cambridge, Cambridge, UK
Abstract :
In this work we reconsider labeling problems with (virtually) continuous state spaces, which are of relevance in low level computer vision. In order to cope with such huge state spaces multi-scale methods have been proposed to approximately solve such labeling tasks. Although performing well in many cases, these methods do usually not come with any guarantees on the returned solution. A general and principled approach to solve labeling problems is based on the well-known linear programming relaxation, which appears to be prohibitive for large state spaces at the first glance. We demonstrate that a coarse-to-fine exploration strategy in the label space is able to optimize the LP relaxation for non-trivial problem instances with reasonable run-times and moderate memory requirements.
Keywords :
computer vision; inference mechanisms; LP relaxation; coarse-to-fine MAP inference; coarse-to-fine exploration strategy; low level computer vision; nontrivial problem instances; state spaces multiscale method; Approximation algorithms; Belief propagation; Computer vision; Inference algorithms; Labeling; Linear programming; Message passing;
Conference_Titel :
Computer Vision and Pattern Recognition (CVPR), 2014 IEEE Conference on
Conference_Location :
Columbus, OH
DOI :
10.1109/CVPR.2014.173