Iteratively Reweighted Graph Cut for Multi-label MRFs with Non-convex Priors

11/24/2014
by   Thalaiyasingam Ajanthan, et al.
0

While widely acknowledged as highly effective in computer vision, multi-label MRFs with non-convex priors are difficult to optimize. To tackle this, we introduce an algorithm that iteratively approximates the original energy with an appropriately weighted surrogate energy that is easier to minimize. Our algorithm guarantees that the original energy decreases at each iteration. In particular, we consider the scenario where the global minimizer of the weighted surrogate energy can be obtained by a multi-label graph cut algorithm, and show that our algorithm then lets us handle of large variety of non-convex priors. We demonstrate the benefits of our method over state-of-the-art MRF energy minimization techniques on stereo and inpainting problems.

READ FULL TEXT

page 7

page 8

research
12/16/2017

An ILP Solver for Multi-label MRFS with Connectivity Constraints

Integer Linear Programming (ILP) formulations of Markov random fields (M...
research
04/23/2020

Fast Convex Relaxations using Graph Discretizations

Matching and partitioning problems are fundamentals of computer vision a...
research
03/17/2017

Nonconvex One-bit Single-label Multi-label Learning

We study an extreme scenario in multi-label learning where each training...
research
09/16/2020

Convex Calibrated Surrogates for the Multi-Label F-Measure

The F-measure is a widely used performance measure for multi-label class...
research
04/23/2019

Non-convex Penalty for Tensor Completion and Robust PCA

In this paper, we propose a novel non-convex tensor rank surrogate funct...
research
02/21/2023

Learning Gradually Non-convex Image Priors Using Score Matching

In this paper, we propose a unified framework of denoising score-based m...
research
03/05/2018

A new stereo formulation not using pixel and disparity models

We introduce a new stereo formulation which does not use pixel and dispa...

Please sign up or login with your details

Forgot password? Click here to reset