In this paper, we propose a robust transformation estimation method based on manifold regularization for non-rigid point set registration. The method iteratively recovers the point correspondence and estimates the spatial transformation between two point sets. The correspondence is established based on existing local feature descriptors which typically results in a number of outliers. To achieve an accurate estimate of the transformation from such putative point correspondence, we formulate the registration problem by a mixture model with a set of latent variables introduced to identify outliers, and a prior involving manifold regularization is imposed on the transformation to capture the underlying intrinsic geometry of the input data. The...
We present a new technique for the simultaneous registration of multiple corresponding point sets wi...
This paper introduces a new method of registering point sets. The registration error is directly min...
This paper discusses non-parametric regression between Riemannian manifolds. This learning problem a...
We present a new point matching algorithm for robust nonrigid registration. The method iteratively r...
Abstract—We introduce a new transformation estimation algo-rithm using the estimator and apply it to...
As a fundamental problem in computer vision community, non-rigid point set registration is a challen...
We present a new point matching algorithm for robust nonrigid registration. The method iteratively r...
Non-rigid point set registration is a key component in many computer vision and pattern recognition ...
In this paper, we present a new method for non-linear pairwise registration of point sets. In this m...
In this paper the problem of pairwise model-to-scene point set registration is considered. Three con...
This work addresses the problem of non rigid registration between two 2D or 3D points sets as a nove...
Non-rigid registration of 3D shapes is an essential task of increasing importance as commodity depth...
This paper introduces two new methods of registering 2D point sets over rigid transformations when t...
Recently, the Coherent Point Drift (CPD) algorithm has become a very popular and efficient method fo...
International audienceThis paper addresses the issue of matching rigid and articulated shapes throug...
We present a new technique for the simultaneous registration of multiple corresponding point sets wi...
This paper introduces a new method of registering point sets. The registration error is directly min...
This paper discusses non-parametric regression between Riemannian manifolds. This learning problem a...
We present a new point matching algorithm for robust nonrigid registration. The method iteratively r...
Abstract—We introduce a new transformation estimation algo-rithm using the estimator and apply it to...
As a fundamental problem in computer vision community, non-rigid point set registration is a challen...
We present a new point matching algorithm for robust nonrigid registration. The method iteratively r...
Non-rigid point set registration is a key component in many computer vision and pattern recognition ...
In this paper, we present a new method for non-linear pairwise registration of point sets. In this m...
In this paper the problem of pairwise model-to-scene point set registration is considered. Three con...
This work addresses the problem of non rigid registration between two 2D or 3D points sets as a nove...
Non-rigid registration of 3D shapes is an essential task of increasing importance as commodity depth...
This paper introduces two new methods of registering 2D point sets over rigid transformations when t...
Recently, the Coherent Point Drift (CPD) algorithm has become a very popular and efficient method fo...
International audienceThis paper addresses the issue of matching rigid and articulated shapes throug...
We present a new technique for the simultaneous registration of multiple corresponding point sets wi...
This paper introduces a new method of registering point sets. The registration error is directly min...
This paper discusses non-parametric regression between Riemannian manifolds. This learning problem a...