A Global Perspective on MAP Inference for Low-Level Vision Supplementary material to ICCV submission \# 1536

TitleA Global Perspective on MAP Inference for Low-Level Vision Supplementary material to ICCV submission \# 1536
Publication TypeJournal Article
Year of Publication2009
AuthorsWoodford, OJ
JournalOptimization
Abstract

In recent years the Markov Random Field (MRF) has become the de facto probabilistic model for low-level vision applications. However, in a maximum a posteriori (MAP) framework, MRFs inherently encourage delta function marginal statistics. By contrast, many low-level vision problems have heavy tailed marginal statistics, making the MRF model unsuitable. In this paper we introduce a more general Marginal Probability Field (MPF), of which the MRF is a special, linear case, and show that convex energy MPFs can be used to encourage arbitrary marginal statistics. We introduce a flexible, extensible framework for effectively optimizing the resulting NP-hard MAP problem , based around dual-decomposition and a modified min-cost flow algorithm, and which achieves global optimality in some instances. We use a range of applications, including image denoising and texture synthesis, to demonstrate the benefits of this class of MPF over MRFs.

Citation KeyWoodford