Non-rigid registration of 3D shapes is an essential task of increasing importance as commodity depth sensors become more widely available for scanning dynamic scenes. Non-rigid registration is much more challenging than rigid registration as it estimates a set of local transformations instead of a single global transformation, and hence is prone to the overfitting issue due to underdetermination. The common wisdom in previous methods is to impose an ℓ2-norm regularization on the local transformation differences. However, the ℓ2-norm regularization tends to bias the solution towards outliers and noise with heavy-tailed distribution, which is verified by the poor goodness-of-fit of the Gaussian distribution over transformation differences. On...
Imperfect data (noise, outliers and partial overlap) and high degrees of freedom make non-rigid regi...
3D deformable registration, Two-level method, Statistical atlas Abstract: We propose a two-level met...
In this article, we present a new 3D non-rigid surface registration algorithm for unstructured point...
Non-rigid registration of 3D shapes is an essential task of increasing importance as commodity depth...
Abstract—We introduce a new transformation estimation algo-rithm using the estimator and apply it to...
International audienceMulti-subject non-rigid registration algorithms using dense transformations of...
Abstract. Non-rigid registration and shape model fitting are the central problems in any shape model...
In this report, we #rst propose a new classi#cation of non-rigid registration algorithms into three ...
International audienceWe extend Bayesian models of non-rigid image registration to allow not only fo...
Abstract. This paper proposes a non-rigid registration formulation cap-turing both global and local ...
We present a robust and accurate 3D registration method for a dense sequence of depth images taken f...
We present a novel, variational and statistical approach for shape registration. Shapes of interest ...
A long-standing issue in non-rigid image registration is the choice of the level of regularisation. ...
A long-standing issue in non-rigid image registration is the choice of the level of regularisation. ...
We present a novel variational and statistical approach for shape registration. Shapes of interest a...
Imperfect data (noise, outliers and partial overlap) and high degrees of freedom make non-rigid regi...
3D deformable registration, Two-level method, Statistical atlas Abstract: We propose a two-level met...
In this article, we present a new 3D non-rigid surface registration algorithm for unstructured point...
Non-rigid registration of 3D shapes is an essential task of increasing importance as commodity depth...
Abstract—We introduce a new transformation estimation algo-rithm using the estimator and apply it to...
International audienceMulti-subject non-rigid registration algorithms using dense transformations of...
Abstract. Non-rigid registration and shape model fitting are the central problems in any shape model...
In this report, we #rst propose a new classi#cation of non-rigid registration algorithms into three ...
International audienceWe extend Bayesian models of non-rigid image registration to allow not only fo...
Abstract. This paper proposes a non-rigid registration formulation cap-turing both global and local ...
We present a robust and accurate 3D registration method for a dense sequence of depth images taken f...
We present a novel, variational and statistical approach for shape registration. Shapes of interest ...
A long-standing issue in non-rigid image registration is the choice of the level of regularisation. ...
A long-standing issue in non-rigid image registration is the choice of the level of regularisation. ...
We present a novel variational and statistical approach for shape registration. Shapes of interest a...
Imperfect data (noise, outliers and partial overlap) and high degrees of freedom make non-rigid regi...
3D deformable registration, Two-level method, Statistical atlas Abstract: We propose a two-level met...
In this article, we present a new 3D non-rigid surface registration algorithm for unstructured point...