A natural representation of data is given by the parameters which generated the data. If the space of parameters is con-tinuous, then we can regard it as a manifold. In practice, we usually do not know this manifold but we just have some rep-resentation of the data, often in a very high-dimensional fea-ture space. Since the number of internal parameters does not change with the representation, the data will effectively lie on a low-dimensional submanifold in feature space. However, the data is usually corrupted by noise, which particularly in high-dimensional feature spaces makes it almost impossible to find the manifold structure. This paper reviews a method called Manifold Denoising, which projects the data onto the submanifold using a di...
We are increasingly confronted with very high dimensional data from speech,images, genomes, and othe...
<p>Subspaces and manifolds are two powerful models for high dimensional signals. Subspaces model lin...
Computer aided diagnosis is often confronted with processing and analyzing high dimensional data. On...
A natural representation of data are the parameters which generated the data. If the parameter space...
International audienceHigh-dimensional feature spaces are often corrupted by noise. This is problema...
With the increasing availability of high dimensional data and demand in sophisticated data analysis ...
We consider the problem of denoising a noisily sampled submanifold M in R^d, where the submanifold M...
Learning the knowledge hidden in the manifold-geometric distribution of the dataset is essential for...
The faithful reconstruction of 3-D models from irregular and noisy point samples is a task central t...
In analyzing complex datasets, it is often of interest to infer lower dimensional structure underlyi...
Abstract—This paper proposes a new approach to analyze high-dimensional data set using low-dimension...
The subject at hand is the dimensionality reduction of statistical manifolds by the use of informati...
Manifold learning plays a central role in many Machine Learning (ML) methods where it assumes inform...
International audienceSupervised manifold learning methods learn data representations by preserving ...
2017-08-09This study addresses a range of fundamental problems in unsupervised manifold learning. Gi...
We are increasingly confronted with very high dimensional data from speech,images, genomes, and othe...
<p>Subspaces and manifolds are two powerful models for high dimensional signals. Subspaces model lin...
Computer aided diagnosis is often confronted with processing and analyzing high dimensional data. On...
A natural representation of data are the parameters which generated the data. If the parameter space...
International audienceHigh-dimensional feature spaces are often corrupted by noise. This is problema...
With the increasing availability of high dimensional data and demand in sophisticated data analysis ...
We consider the problem of denoising a noisily sampled submanifold M in R^d, where the submanifold M...
Learning the knowledge hidden in the manifold-geometric distribution of the dataset is essential for...
The faithful reconstruction of 3-D models from irregular and noisy point samples is a task central t...
In analyzing complex datasets, it is often of interest to infer lower dimensional structure underlyi...
Abstract—This paper proposes a new approach to analyze high-dimensional data set using low-dimension...
The subject at hand is the dimensionality reduction of statistical manifolds by the use of informati...
Manifold learning plays a central role in many Machine Learning (ML) methods where it assumes inform...
International audienceSupervised manifold learning methods learn data representations by preserving ...
2017-08-09This study addresses a range of fundamental problems in unsupervised manifold learning. Gi...
We are increasingly confronted with very high dimensional data from speech,images, genomes, and othe...
<p>Subspaces and manifolds are two powerful models for high dimensional signals. Subspaces model lin...
Computer aided diagnosis is often confronted with processing and analyzing high dimensional data. On...