Learning the knowledge hidden in the manifold-geometric distribution of the dataset is essential for many machine learning algorithms. However, geometric distribution is usually corrupted by noise, especially in the high-dimensional dataset. In this paper, we propose a denoising method to capture the “true” geometric structure of a high-dimensional nonrigid point cloud dataset by a variational approach. Firstly, we improve the Tikhonov model by adding a local structure term to make variational diffusion on the tangent space of the manifold. Then, we define the discrete Laplacian operator by graph theory and get an optimal solution by the Euler–Lagrange equation. Experiments show that our method could remove noise effectively on both synthet...
We consider total variation (TV) minimization for manifold-valued data. We propose a cyclic proximal...
We study a method to reconstruct a nonlinear manifold embedded in Euclidean space from point cloud d...
We introduce a new nonsmooth variational model for the restoration of manifold-valued data which inc...
A natural representation of data are the parameters which generated the data. If the parameter space...
A natural representation of data is given by the parameters which generated the data. If the space o...
We consider the problem of denoising a noisily sampled submanifold M in R^d, where the submanifold M...
The faithful reconstruction of 3-D models from irregular and noisy point samples is a task central t...
With the increasing availability of high dimensional data and demand in sophisticated data analysis ...
International audienceHigh-dimensional feature spaces are often corrupted by noise. This is problema...
One fundamental assumption in object recognition as well as in other computer vision and pattern rec...
One fundamental assumption in object recognition as well as in other computer vision and pattern rec...
<p>In this paper, we propose a novel principal bundle model and apply it to the image denoising prob...
Recently, there have been several advances in the machine learning and pattern recognition communiti...
2017-08-09This study addresses a range of fundamental problems in unsupervised manifold learning. Gi...
Manifold learning plays a central role in many Machine Learning (ML) methods where it assumes inform...
We consider total variation (TV) minimization for manifold-valued data. We propose a cyclic proximal...
We study a method to reconstruct a nonlinear manifold embedded in Euclidean space from point cloud d...
We introduce a new nonsmooth variational model for the restoration of manifold-valued data which inc...
A natural representation of data are the parameters which generated the data. If the parameter space...
A natural representation of data is given by the parameters which generated the data. If the space o...
We consider the problem of denoising a noisily sampled submanifold M in R^d, where the submanifold M...
The faithful reconstruction of 3-D models from irregular and noisy point samples is a task central t...
With the increasing availability of high dimensional data and demand in sophisticated data analysis ...
International audienceHigh-dimensional feature spaces are often corrupted by noise. This is problema...
One fundamental assumption in object recognition as well as in other computer vision and pattern rec...
One fundamental assumption in object recognition as well as in other computer vision and pattern rec...
<p>In this paper, we propose a novel principal bundle model and apply it to the image denoising prob...
Recently, there have been several advances in the machine learning and pattern recognition communiti...
2017-08-09This study addresses a range of fundamental problems in unsupervised manifold learning. Gi...
Manifold learning plays a central role in many Machine Learning (ML) methods where it assumes inform...
We consider total variation (TV) minimization for manifold-valued data. We propose a cyclic proximal...
We study a method to reconstruct a nonlinear manifold embedded in Euclidean space from point cloud d...
We introduce a new nonsmooth variational model for the restoration of manifold-valued data which inc...