IEEE We propose the first fast and certifiable algorithm for the registration of two sets of three-dimensional (3-D) points in the presence of large amounts of outlier correspondences. A certifiable algorithm is one that attempts to solve an intractable optimization problem (e.g., robust estimation with outliers) and provides readily checkable conditions to verify if the returned solution is optimal (e.g., if the algorithm produced the most accurate estimate in the face of outliers) or bound its suboptimality or accuracy. Toward this goal, we first reformulate the registration problem using a truncated least squares (TLS) cost that makes the estimation insensitive to a large fraction of spurious correspondences. Then, we provide a general g...
The performance of surface registration relies heavily on the metric used for the alignment error be...
This paper presents an algorithm for the automatic registration of terrestrial point clouds by match...
The use of deep 3D point cloud models in safety-critical applications, such as autonomous driving, d...
We propose a robust approach for the registration of two sets of 3D points in the presence of a lar...
In this paper, a globally optimal algorithm based on a maximum feasible subsystem framework is propo...
Point set registration (PSR) from correspondences is a basic problem in the area of computer vision,...
In this paper the problem of pairwise model-to-scene point set registration is considered. Three con...
This paper presents a robust 3D point cloud registration algorithm based on bidirectional Maximum Co...
<div><p>This paper presents a robust 3D point cloud registration algorithm based on bidirectional Ma...
Generating a set of high-quality correspondences or matches is one of the most critical steps in poi...
International audienceTraditional 3D point clouds registration algorithms, based on Iterative Closes...
This paper presents an algorithm for the automatic registration of terrestrial point clouds by match...
The aim of this thesis is to provide a robust and globally optimal method for rigid point set regist...
We introduce a stochastic algorithm for pairwise affine registration of partially overlapping 3D poi...
We introduce a stochastic algorithm for pairwise affine registration of partially overlapping 3D poi...
The performance of surface registration relies heavily on the metric used for the alignment error be...
This paper presents an algorithm for the automatic registration of terrestrial point clouds by match...
The use of deep 3D point cloud models in safety-critical applications, such as autonomous driving, d...
We propose a robust approach for the registration of two sets of 3D points in the presence of a lar...
In this paper, a globally optimal algorithm based on a maximum feasible subsystem framework is propo...
Point set registration (PSR) from correspondences is a basic problem in the area of computer vision,...
In this paper the problem of pairwise model-to-scene point set registration is considered. Three con...
This paper presents a robust 3D point cloud registration algorithm based on bidirectional Maximum Co...
<div><p>This paper presents a robust 3D point cloud registration algorithm based on bidirectional Ma...
Generating a set of high-quality correspondences or matches is one of the most critical steps in poi...
International audienceTraditional 3D point clouds registration algorithms, based on Iterative Closes...
This paper presents an algorithm for the automatic registration of terrestrial point clouds by match...
The aim of this thesis is to provide a robust and globally optimal method for rigid point set regist...
We introduce a stochastic algorithm for pairwise affine registration of partially overlapping 3D poi...
We introduce a stochastic algorithm for pairwise affine registration of partially overlapping 3D poi...
The performance of surface registration relies heavily on the metric used for the alignment error be...
This paper presents an algorithm for the automatic registration of terrestrial point clouds by match...
The use of deep 3D point cloud models in safety-critical applications, such as autonomous driving, d...