Many computer vision methods use consensus maximization to relate measurements containing outliers with the correct transformation model. In the context of rigid shapes, this is typically done using Random Sampling and Consensus (RANSAC) by estimating an analytical model that agrees with the largest number of measurements (inliers). However, small parameter models may not be always available. In this paper, we formulate the model-free consensus maximization as an Integer Program in a graph using ‘rules’ on measurements. We then provide a method to solve it optimally using the Branch and Bound (BnB) paradigm. We focus its application on non-rigid shapes, where we apply the method to remove outlier 3D correspondences and achieve performance s...
In many computer vision applications, the task of robustly estimating the set of parameters of a ge...
ABSTRACT: This paper presents a new method for fitting a digital line or plane to a given set of poi...
ensemble of segmentations consensus segmentation Figure 1: The proposed framework allows to obtain r...
Consensus maximization is a key strategy in 3D vision for robust geometric model estimation from mea...
The maximum consensus problem is fundamentally important to robust geometric fitting in computer vis...
Robust model fitting plays a vital role in computer vision, and research into algorithms for robust ...
Robust model fitting plays a vital role in computer vision, and research into algorithms for robust ...
A popular approach to detect outliers in a data set is to find the largest consensus set, that is to...
Consensus maximisation (MaxCon), which is widely used for robust fitting in computer vision, aims to...
In this paper, we formulate a generic non-minimal solver using the existing tools of Polynomials Opt...
International audienceThis article presents a new method for fitting a digital line or plane to a gi...
International audienceThis paper presents a method for fitting a digital plane to a given set of poi...
© 2016 IEEE. Semidefinite Programming (SDP) and Sums-of-Squ-ares (SOS) relaxations have led to certi...
International audienceIn computer vision, and particularly in 3D reconstruction from images, it is c...
International audienceData correspondence/grouping is a fundamental topic in computer vision. Findin...
In many computer vision applications, the task of robustly estimating the set of parameters of a ge...
ABSTRACT: This paper presents a new method for fitting a digital line or plane to a given set of poi...
ensemble of segmentations consensus segmentation Figure 1: The proposed framework allows to obtain r...
Consensus maximization is a key strategy in 3D vision for robust geometric model estimation from mea...
The maximum consensus problem is fundamentally important to robust geometric fitting in computer vis...
Robust model fitting plays a vital role in computer vision, and research into algorithms for robust ...
Robust model fitting plays a vital role in computer vision, and research into algorithms for robust ...
A popular approach to detect outliers in a data set is to find the largest consensus set, that is to...
Consensus maximisation (MaxCon), which is widely used for robust fitting in computer vision, aims to...
In this paper, we formulate a generic non-minimal solver using the existing tools of Polynomials Opt...
International audienceThis article presents a new method for fitting a digital line or plane to a gi...
International audienceThis paper presents a method for fitting a digital plane to a given set of poi...
© 2016 IEEE. Semidefinite Programming (SDP) and Sums-of-Squ-ares (SOS) relaxations have led to certi...
International audienceIn computer vision, and particularly in 3D reconstruction from images, it is c...
International audienceData correspondence/grouping is a fundamental topic in computer vision. Findin...
In many computer vision applications, the task of robustly estimating the set of parameters of a ge...
ABSTRACT: This paper presents a new method for fitting a digital line or plane to a given set of poi...
ensemble of segmentations consensus segmentation Figure 1: The proposed framework allows to obtain r...