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Vision / Scale-invariant feature transform / Object recognition / Principal component analysis / SURF / Feature extraction / Dimension reduction / Eigenvalues and eigenvectors / Non-negative matrix factorization / Computer vision / Algebra / Statistics
Date: 2004-04-09 14:05:03
Vision
Scale-invariant feature transform
Object recognition
Principal component analysis
SURF
Feature extraction
Dimension reduction
Eigenvalues and eigenvectors
Non-negative matrix factorization
Computer vision
Algebra
Statistics

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