Maximum consensus estimation plays a critically important role in computer vision. Currently, the most prevalent approach draws from the class of non-deterministic hypothesize-and-verify algorithms, which are cheap but do not guarantee solution quality. On the other extreme, there are global algorithms which are exhaustive search in nature and can be costly for practical-sized inputs. This paper aims to fill the gap between the two extremes by proposing a locally convergent maximum consensus algorithm. Our method is based on a formulating the problem with linear complementarity constraints, then defining a penalized version which is provably equivalent to the original problem. Based on the penalty problem, we develop a Frank-Wolfe algorithm...
This paper explores the design problem of consensus algorithms in a class of convex geometric metric...
Abstract: Because of their use for distributed decision making, consensus algorithms have attracted ...
Abstract—In decentralized consensus optimization, a connected network of agents collaboratively mini...
Maximum consensus is one of the most popular criteria for robust estimation in computer vision. Desp...
Robust parameter estimation in computer vision is frequently accomplished by solving the maximum con...
Maximum consensus is fundamentally important in computer vision as a criterion for robust estimation...
Finding the largest consensus set is one of the key ideas used by the original RANSAC for removing o...
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...
We give a rigorous proof of convergence of a recently proposed consensus algorithm with output cons...
The maximum consensus problem lies at the core of several important computer vision applications as ...
In many computer vision applications, the task of robustly estimating the set of parameters of a ge...
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 ...
International audienceGiven a set of discrete points in a 2D digital image containing noise, we form...
This paper explores the design problem of consensus algorithms in a class of convex geometric metric...
Abstract: Because of their use for distributed decision making, consensus algorithms have attracted ...
Abstract—In decentralized consensus optimization, a connected network of agents collaboratively mini...
Maximum consensus is one of the most popular criteria for robust estimation in computer vision. Desp...
Robust parameter estimation in computer vision is frequently accomplished by solving the maximum con...
Maximum consensus is fundamentally important in computer vision as a criterion for robust estimation...
Finding the largest consensus set is one of the key ideas used by the original RANSAC for removing o...
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...
We give a rigorous proof of convergence of a recently proposed consensus algorithm with output cons...
The maximum consensus problem lies at the core of several important computer vision applications as ...
In many computer vision applications, the task of robustly estimating the set of parameters of a ge...
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 ...
International audienceGiven a set of discrete points in a 2D digital image containing noise, we form...
This paper explores the design problem of consensus algorithms in a class of convex geometric metric...
Abstract: Because of their use for distributed decision making, consensus algorithms have attracted ...
Abstract—In decentralized consensus optimization, a connected network of agents collaboratively mini...