Multicuts enable to conveniently represent discrete graphical models for unsupervised and supervised image segmentation, based on local energy functions that exhibit symmetries. The basic Potts model and natural extensions thereof to higher-order models provide a prominent class of representatives, that cover a broad range of segmentation problems relevant to image analysis and computer vision. We show how to take into account such higher-order terms systematically in view of computational inference, and present results of a compre-hensive and competitive numerical evaluation of a variety of dedicated cutting-plane algorithms. Our results reveal ways to evaluate a significant subset of models globally optimal, with-out compromising runtime....
A novel energy minimization method for general higher-order binary energy functions is proposed in t...
International audienceThis paper defines the basis of a new hierarchical framework for segmentation ...
Image segmentation is a central topic in image processing and computer vision and a key issue in man...
Multicuts enable to conveniently represent discrete graphical models for unsupervised and supervised...
In this paper, we deal with a generative model for multi-label, interactive segmentation. To estimat...
Recently, unsupervised image segmentation has become increasingly popular. Starting from a superpixe...
Among image segmentation algorithms there are two major groups: (a) methods assuming known appearanc...
Minimum cost lifted multicut problem is a generalization of the multicut problem and is a means to o...
In the past years, discrete graphical models have become a major conceptual tool to model the struct...
the date of receipt and acceptance should be inserted later Abstract Efficient global optimization t...
Preprint versionInternational audienceHierarchical segmentation is a multi-scale analysis of an imag...
Graph decomposition has always been a very important concept in machine learning and computer vision...
We propose a novel graphical model for probabilistic im-age segmentation that contributes both to as...
Optimization algorithms have a long history of success in computer vision, providing effective algor...
Higher order energy functions have the ability to en-code high level structural dependencies between...
A novel energy minimization method for general higher-order binary energy functions is proposed in t...
International audienceThis paper defines the basis of a new hierarchical framework for segmentation ...
Image segmentation is a central topic in image processing and computer vision and a key issue in man...
Multicuts enable to conveniently represent discrete graphical models for unsupervised and supervised...
In this paper, we deal with a generative model for multi-label, interactive segmentation. To estimat...
Recently, unsupervised image segmentation has become increasingly popular. Starting from a superpixe...
Among image segmentation algorithms there are two major groups: (a) methods assuming known appearanc...
Minimum cost lifted multicut problem is a generalization of the multicut problem and is a means to o...
In the past years, discrete graphical models have become a major conceptual tool to model the struct...
the date of receipt and acceptance should be inserted later Abstract Efficient global optimization t...
Preprint versionInternational audienceHierarchical segmentation is a multi-scale analysis of an imag...
Graph decomposition has always been a very important concept in machine learning and computer vision...
We propose a novel graphical model for probabilistic im-age segmentation that contributes both to as...
Optimization algorithms have a long history of success in computer vision, providing effective algor...
Higher order energy functions have the ability to en-code high level structural dependencies between...
A novel energy minimization method for general higher-order binary energy functions is proposed in t...
International audienceThis paper defines the basis of a new hierarchical framework for segmentation ...
Image segmentation is a central topic in image processing and computer vision and a key issue in man...