In this paper, we develop methods for outlier removal and noise reduction based on weighted local linear smoothing for a set of noisy points sampled from a nonlinear manifold. The methods can be used by manifold learning methods such as Isomap, LLE and LTSA as a preprocessing procedure so as to obtain a more accurate reconstruction of the underlying nonlinear manifolds. Weighted principal component analysis is used as a building block of our methods and we develop an iterative weight selection scheme that leads to robust local linear fitting. We also develop an e#cient and e#ective bias-reduction method to deal with the trim the peak and fill the valley phenomenon in local linear smoothing. Several illustrative examples are presented to sho...
A natural representation of data is given by the parameters which generated the data. If the space o...
Manifold learning tries to find low-dimensional manifolds on high-dimensional data. It is useful to ...
Over the past few years, a large family of manifold learning algorithms have been proposed, and appl...
The faithful reconstruction of 3-D models from irregular and noisy point samples is a task central t...
Recently manifold learning has received extensive interest in the community of pattern recognition. ...
Constructing an efficient parametrization of a large, noisy data set of points lying close to a smoo...
The problem of dimensionality reduction arises in many fields of information processing, including m...
A natural representation of data are the parameters which generated the data. If the parameter space...
The design and analysis of methods in signal processing is greatly impacted by the model being selec...
Manifold learning is a popular recent approach to nonlinear dimensionality reduction. Algorithms for...
We are given a set of points in a high dimensional space. For instance, this set can represent many ...
Local manifold learning has been successfully applied to hyperspectral dimensionality reduction in o...
We present a new algorithm, Locally Smooth Manifold Learning (LSML), that learns a warping function ...
Three-dimensional manifold data arise in many contexts of geoscience, such as laser scanning, drilli...
Abstract: We review the ideas, algorithms, and numerical performance of manifold-based machine learn...
A natural representation of data is given by the parameters which generated the data. If the space o...
Manifold learning tries to find low-dimensional manifolds on high-dimensional data. It is useful to ...
Over the past few years, a large family of manifold learning algorithms have been proposed, and appl...
The faithful reconstruction of 3-D models from irregular and noisy point samples is a task central t...
Recently manifold learning has received extensive interest in the community of pattern recognition. ...
Constructing an efficient parametrization of a large, noisy data set of points lying close to a smoo...
The problem of dimensionality reduction arises in many fields of information processing, including m...
A natural representation of data are the parameters which generated the data. If the parameter space...
The design and analysis of methods in signal processing is greatly impacted by the model being selec...
Manifold learning is a popular recent approach to nonlinear dimensionality reduction. Algorithms for...
We are given a set of points in a high dimensional space. For instance, this set can represent many ...
Local manifold learning has been successfully applied to hyperspectral dimensionality reduction in o...
We present a new algorithm, Locally Smooth Manifold Learning (LSML), that learns a warping function ...
Three-dimensional manifold data arise in many contexts of geoscience, such as laser scanning, drilli...
Abstract: We review the ideas, algorithms, and numerical performance of manifold-based machine learn...
A natural representation of data is given by the parameters which generated the data. If the space o...
Manifold learning tries to find low-dimensional manifolds on high-dimensional data. It is useful to ...
Over the past few years, a large family of manifold learning algorithms have been proposed, and appl...