Title :
Unsupervised Nonlinear Manifold Learning
Author :
Brucher, Matthieu ; Heinrich, Christian ; Heitz, Fabrice ; Armspach, Jean-Paul
Author_Institution :
Univ. Louis Pasteur, Strasbourg
fDate :
Sept. 16 2007-Oct. 19 2007
Abstract :
This communication deals with data reduction and regression. A set of high dimensional data (e.g., images) usually has only a few degrees of freedom with corresponding variables that are used to parameterize the original data set. Data understanding, visualization and classification are the usual goals. The proposed method reduces data considering a unique set of low-dimensional variables and a user-defined cost function in the multidimensional scaling framework. Mapping of the reduced variables to the original data is also addressed, which is another contribution of this work. Typical data reduction methods, such as Isomap or LLE, do not deal with this important aspect of manifold learning. We also tackle the inversion of the mapping, which makes it possible to project high-dimensional noisy points onto the manifold, like PCA with linear models. We present an application of our approach to several standard data sets such as the SwissRoll.
Keywords :
data reduction; data visualisation; regression analysis; unsupervised learning; data classification; data reduction; data regression; data visualization; linear model; multidimensional scaling; unsupervised nonlinear manifold learning; Cost function; Data visualization; Multidimensional systems; Neuroimaging; Noise reduction; Principal component analysis; Robustness; Scattering; Shape; Unsupervised learning; Unsupervised learning; data reduction; multidimensional scaling; regression;
Conference_Titel :
Image Processing, 2007. ICIP 2007. IEEE International Conference on
Conference_Location :
San Antonio, TX
Print_ISBN :
978-1-4244-1437-6
Electronic_ISBN :
1522-4880
DOI :
10.1109/ICIP.2007.4379104