We present a novel Quadratic Program (QP) formulation for robust multi-model fitting of geometric structures in vision data. Our objective function enforces both the fidelity of a model to the data and the similarity between its associated inliers. Departing from most previous optimization-based approaches, the outcome of our method is a ranking of a given set of putative models, instead of a pre-specified number of “good” candidates (or an attempt to decide the right number of models). This is particularly useful when the number of structures in the data is a priori unascertainable due to unknown intent and purposes. Another key advantage of our approach is that it operates in a unified optimization framework, and the standard QP form of o...
Feature matching and model fitting are fundamental problems in multi-view geometry. They are chicken...
We consider the problem of multiple fitting of linearly parametrized curves, that arises in many com...
Recently, some hypergraph-based methods have been proposed to deal with the problem of model fitting...
We present a general framework for geometric model fitting based on a set coverage formulation that ...
We present a general framework for geometric model fitting based on a set coverage formulation that ...
We present a general framework for geometric model fitting based on a set coverage formulation that ...
We present a general framework for geometric model fitting based on a set coverage formulation that ...
We present a general framework for geometric model fitting based on a set coverage formulation that ...
We present a general framework for geometric model fitting based on a set coverage formulation that ...
How hard are geometric vision problems with outliers? We show that for most fitting problems, a solu...
How hard are geometric vision problems with outliers? We show that for most fitting problems, a solu...
Many standard approaches to geometric model fitting are based on pre-matched image features. Typical...
International audienceWe describe work in progress on a numerical library for estimating multi-image...
Recent works on multimodel fitting are often formulated as an energy minimization task, where the en...
This paper deals with the geometric multi-model fitting from noisy, unstructured point set data (e.g...
Feature matching and model fitting are fundamental problems in multi-view geometry. They are chicken...
We consider the problem of multiple fitting of linearly parametrized curves, that arises in many com...
Recently, some hypergraph-based methods have been proposed to deal with the problem of model fitting...
We present a general framework for geometric model fitting based on a set coverage formulation that ...
We present a general framework for geometric model fitting based on a set coverage formulation that ...
We present a general framework for geometric model fitting based on a set coverage formulation that ...
We present a general framework for geometric model fitting based on a set coverage formulation that ...
We present a general framework for geometric model fitting based on a set coverage formulation that ...
We present a general framework for geometric model fitting based on a set coverage formulation that ...
How hard are geometric vision problems with outliers? We show that for most fitting problems, a solu...
How hard are geometric vision problems with outliers? We show that for most fitting problems, a solu...
Many standard approaches to geometric model fitting are based on pre-matched image features. Typical...
International audienceWe describe work in progress on a numerical library for estimating multi-image...
Recent works on multimodel fitting are often formulated as an energy minimization task, where the en...
This paper deals with the geometric multi-model fitting from noisy, unstructured point set data (e.g...
Feature matching and model fitting are fundamental problems in multi-view geometry. They are chicken...
We consider the problem of multiple fitting of linearly parametrized curves, that arises in many com...
Recently, some hypergraph-based methods have been proposed to deal with the problem of model fitting...