Robust model fitting plays a vital role in computer vision, and research into algorithms for robust fitting continues to be active. Arguably the most popular paradigm for robust fitting in computer vision is consensus maximisation, which strives to find the model parameters that maximise the number of inliers. Despite the significant developments in algorithms for consensus maximisation, there has been a lack of fundamental analysis of the problem in the computer vision literature. In particular, whether consensus maximisation is “tractable” remains a question that has not been rigorously dealt with, thus making it difficult to assess and compare the performance of proposed algorithms, relative to what is theoretically achievable. To shed l...
Robust parameter estimation is an important area in computer vision that underpins many practical ap...
ABSTRACT: This paper presents a new method for fitting a digital line or plane to a given set of poi...
Maximum consensus estimation plays a critically important role in computer vision. Currently, the mo...
Robust model fitting plays a vital role in computer vision, and research into algorithms for robust ...
Many computer vision applications require robust model estimation from a set of observed data. Howev...
Computer vision tasks often require the robust fit of a model to some data. In a robust fit, two maj...
In many computer vision applications, the task of robustly estimating the set of parameters of a ge...
The maximum consensus problem is fundamentally important to robust geometric fitting in computer vis...
Consensus maximisation (MaxCon), which is widely used for robust fitting in computer vision, aims to...
Robust parameter estimation in computer vision is frequently accomplished by solving the maximum con...
Many computer vision methods use consensus maximization to relate measurements containing outliers w...
Consensus maximization is a key strategy in 3D vision for robust geometric model estimation from mea...
Maximum consensus is one of the most popular criteria for robust estimation in computer vision. Desp...
Maximum consensus is fundamentally important in computer vision as a criterion for robust estimation...
International audienceThis article presents a new method for fitting a digital line or plane to a gi...
Robust parameter estimation is an important area in computer vision that underpins many practical ap...
ABSTRACT: This paper presents a new method for fitting a digital line or plane to a given set of poi...
Maximum consensus estimation plays a critically important role in computer vision. Currently, the mo...
Robust model fitting plays a vital role in computer vision, and research into algorithms for robust ...
Many computer vision applications require robust model estimation from a set of observed data. Howev...
Computer vision tasks often require the robust fit of a model to some data. In a robust fit, two maj...
In many computer vision applications, the task of robustly estimating the set of parameters of a ge...
The maximum consensus problem is fundamentally important to robust geometric fitting in computer vis...
Consensus maximisation (MaxCon), which is widely used for robust fitting in computer vision, aims to...
Robust parameter estimation in computer vision is frequently accomplished by solving the maximum con...
Many computer vision methods use consensus maximization to relate measurements containing outliers w...
Consensus maximization is a key strategy in 3D vision for robust geometric model estimation from mea...
Maximum consensus is one of the most popular criteria for robust estimation in computer vision. Desp...
Maximum consensus is fundamentally important in computer vision as a criterion for robust estimation...
International audienceThis article presents a new method for fitting a digital line or plane to a gi...
Robust parameter estimation is an important area in computer vision that underpins many practical ap...
ABSTRACT: This paper presents a new method for fitting a digital line or plane to a given set of poi...
Maximum consensus estimation plays a critically important role in computer vision. Currently, the mo...