We introduce a recently published convex relaxation approach for the quadratic assignment problem to the field of computer vision. Due to convexity, a favourable property of this approach is the absence of any tuning parameters and the computation of high–quality combinatorial solutions by solving a mathematically simple optimization problem. Furthermore, the relaxation step always computes a tight lower bound of the objective function and thus can additionally be used as an efficient subroutine of an exact search algorithm. We report the results of both established benchmark experiments from combinatorial mathematics and random ground-truth experiments using computer-generated graphs. For comparison, a rece...
Robust fitting of geometric models is a core problem in computer vision. The most common approach is...
This talk will survey some results on join processing that use inequalities from convex geometry. Re...
Diese Doktorarbeit behandelt bekannte und neue Relaxationstechniken für das quadratische Zuordnungsp...
We introduce a recently published convex relaxation approach for the quadratic assignment problem to...
Automatic recognition of objects in images is a difficult and challenging task in computer vision wh...
Abstract. We present a novel approach to the weighted graph-matching problem in computer vision, bas...
International audienceWe consider the (QAP) that consists in minimizing a quadratic function subject...
In this work we study convex relaxations of quadratic optimisation problems over permutation matrice...
Figure 1: Consistent Collection Matching. Results of the proposed one-stage procedure for finding co...
AbstractSemidefinite relaxations of the quadratic assignment problem (QAP) have recently turned out ...
In this paper, we formulate a generic non-minimal solver using the existing tools of Polynomials Opt...
Let View the MathML source be a 0-1 quadratic program which consists in minimizing a quadratic funct...
We present a convex relaxation for the multi-graph matching problem. Our formulation allows for part...
We present a convex optimization approach to dense stereo matching in computer vision. Instead of di...
We describe a new convex quadratic programming bound for the quadratic assignment problem (QAP). The...
Robust fitting of geometric models is a core problem in computer vision. The most common approach is...
This talk will survey some results on join processing that use inequalities from convex geometry. Re...
Diese Doktorarbeit behandelt bekannte und neue Relaxationstechniken für das quadratische Zuordnungsp...
We introduce a recently published convex relaxation approach for the quadratic assignment problem to...
Automatic recognition of objects in images is a difficult and challenging task in computer vision wh...
Abstract. We present a novel approach to the weighted graph-matching problem in computer vision, bas...
International audienceWe consider the (QAP) that consists in minimizing a quadratic function subject...
In this work we study convex relaxations of quadratic optimisation problems over permutation matrice...
Figure 1: Consistent Collection Matching. Results of the proposed one-stage procedure for finding co...
AbstractSemidefinite relaxations of the quadratic assignment problem (QAP) have recently turned out ...
In this paper, we formulate a generic non-minimal solver using the existing tools of Polynomials Opt...
Let View the MathML source be a 0-1 quadratic program which consists in minimizing a quadratic funct...
We present a convex relaxation for the multi-graph matching problem. Our formulation allows for part...
We present a convex optimization approach to dense stereo matching in computer vision. Instead of di...
We describe a new convex quadratic programming bound for the quadratic assignment problem (QAP). The...
Robust fitting of geometric models is a core problem in computer vision. The most common approach is...
This talk will survey some results on join processing that use inequalities from convex geometry. Re...
Diese Doktorarbeit behandelt bekannte und neue Relaxationstechniken für das quadratische Zuordnungsp...