Title :
Local principal component pursuit for nonlinear datasets
Author :
Wohlberg, Brendt ; Chartrand, Rick ; Theiler, James
Author_Institution :
Los Alamos Nat. Lab., Los Alamos, NM, USA
Abstract :
A robust version of Principal Component Analysis (PCA) can be constructed via a decomposition of a data matrix into low rank and sparse components, the former representing a low-dimensional linear model of the data, and the latter representing sparse deviations from the low-dimensional subspace. This decomposition has been shown to be highly effective, but the underlying model is not appropriate when the data are not modeled well by a single low-dimensional subspace. We construct a new decomposition corresponding to a more general underlying model consisting of a union of low-dimensional subspaces, and demonstrate the performance on a video background removal problem.
Keywords :
matrix algebra; principal component analysis; video signal processing; PCA; data matrix decomposition; local principal component pursuit; low rank components; low-dimensional linear model; nonlinear datasets; principal component analysis; single low-dimensional subspace; sparse components; sparse deviation representation; video background removal problem; Cameras; Data models; Manifolds; Matrix decomposition; Principal component analysis; Robustness; Sparse matrices; Compressive Sensing; Group Sparse; Low Rank; Robust Principal Component Analysis; Sparse Representation;
Conference_Titel :
Acoustics, Speech and Signal Processing (ICASSP), 2012 IEEE International Conference on
Conference_Location :
Kyoto
Print_ISBN :
978-1-4673-0045-2
Electronic_ISBN :
1520-6149
DOI :
10.1109/ICASSP.2012.6288776