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Linear algebra / Multivariate statistics / Matrix theory / Dimension reduction / Numerical linear algebra / Singular value decomposition / Covariance / Principal component analysis / Normal distribution / Kalman filter / Linear discriminant analysis / Eigenvalues and eigenvectors
Date: 2007-08-14 20:46:19
Linear algebra
Multivariate statistics
Matrix theory
Dimension reduction
Numerical linear algebra
Singular value decomposition
Covariance
Principal component analysis
Normal distribution
Kalman filter
Linear discriminant analysis
Eigenvalues and eigenvectors

Incremental Learning for Robust Visual Tracking ∗ David A. Ross∗ Jongwoo Lim† Ruei-Sung Lin‡ Ming-Hsuan Yang† University of Toronto † Honda Research Institute, USA ‡ Motorola Labs

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