The maximum consensus problem is fundamentally important to robust geometric fitting in computer vision. Solving the problem exactly is computationally demanding, and the effort required increases rapidly with the problem size. Although randomized algorithms are much more efficient, the optimality of the solution is not guaranteed. Towards the goal of solving maximum consensus exactly, we present guaranteed outlier removal as a technique to reduce the runtime of exact algorithms. Specifically, before conducting global optimization, we attempt to remove data that are provably true outliers, i.e., those that do not exist in the maximum consensus set. We propose an algorithm based on mixed integer linear programming to perform the removal. The...
A popular approach to detect outliers in a data set is to find the largest consensus set, that is to...
We consider the problem of removing c points from a set S of n points so that the remaining point se...
© 2016 IEEE. Semidefinite Programming (SDP) and Sums-of-Squ-ares (SOS) relaxations have led to certi...
The maximum consensus problem is fundamentally important to robust geometric fitting in computer vis...
Maximum consensus is fundamentally important in computer vision as a criterion for robust estimation...
This paper proposes a novel adversarial optimiza- tion approach to efficient outlier removal in comp...
Many computer vision methods use consensus maximization to relate measurements containing outliers w...
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 ...
Consensus maximisation (MaxCon), which is widely used for robust fitting in computer vision, aims to...
Maximum consensus estimation plays a critically important role in computer vision. Currently, the mo...
Finding the largest consensus set is one of the key ideas used by the original RANSAC for removing o...
Consensus maximization is a key strategy in 3D vision for robust geometric model estimation from mea...
L∞ norm has been recently introduced to multi-view geometry computation to achieve globally optimal ...
Maximum consensus is one of the most popular criteria for robust estimation in computer vision. Desp...
A popular approach to detect outliers in a data set is to find the largest consensus set, that is to...
We consider the problem of removing c points from a set S of n points so that the remaining point se...
© 2016 IEEE. Semidefinite Programming (SDP) and Sums-of-Squ-ares (SOS) relaxations have led to certi...
The maximum consensus problem is fundamentally important to robust geometric fitting in computer vis...
Maximum consensus is fundamentally important in computer vision as a criterion for robust estimation...
This paper proposes a novel adversarial optimiza- tion approach to efficient outlier removal in comp...
Many computer vision methods use consensus maximization to relate measurements containing outliers w...
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 ...
Consensus maximisation (MaxCon), which is widely used for robust fitting in computer vision, aims to...
Maximum consensus estimation plays a critically important role in computer vision. Currently, the mo...
Finding the largest consensus set is one of the key ideas used by the original RANSAC for removing o...
Consensus maximization is a key strategy in 3D vision for robust geometric model estimation from mea...
L∞ norm has been recently introduced to multi-view geometry computation to achieve globally optimal ...
Maximum consensus is one of the most popular criteria for robust estimation in computer vision. Desp...
A popular approach to detect outliers in a data set is to find the largest consensus set, that is to...
We consider the problem of removing c points from a set S of n points so that the remaining point se...
© 2016 IEEE. Semidefinite Programming (SDP) and Sums-of-Squ-ares (SOS) relaxations have led to certi...