Title of article :
An Analysis of Linear Subspace Approaches for Computer Vision and
Pattern Recognition
Author/Authors :
PEI CHEN AND DAVID SUTER، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2006
Abstract :
Linear subspace analysis (LSA) has become rather ubiquitous in a wide range of problems arising in
pattern recognition and computer vision. The essence of these approaches is that certain structures are intrinsically
(or approximately) low dimensional: for example, the factorization approach to the problem of structure from
motion (SFM) and principal component analysis (PCA) based approach to face recognition. In LSA, the singular
value decomposition (SVD) is usually the basic mathematical tool. However, analysis of the performance, in the
presence of noise, has been lacking.We present such an analysis here. First, the “denoising capacity” of the SVD is
analysed. Specifically, given a rank-r matrix, corrupted by noise—how much noise remains in the rank-r projected
version of that corrupted matrix? Second, we study the “learning capacity” of the LSA-based recognition system
in a noise-corrupted environment. Specifically, LSA systems that attempt to capture a data class as belonging to
a rank-r column space will be affected by noise in both the training samples (measurement noise will mean the
learning samples will not produce the “true subspace”) and the test sample (which will also have measurement
noise on top of the ideal clean sample belonging to the “true subspace”). These results should help one to predict
aspects of performance and to design more optimal systems in computer vision, particularly in tasks, such as SFM
and face recognition. Our analysis agrees with certain observed phenomenon, and these observations, together with
our simulations, verify the correctness of our theory
Keywords :
matrix perturbation , first-order perturbation , multipleeigenvalue/singular value. , Singular value decomposition , linear subspaces , Principal component analysis , structure from motion , Homography , Face recognition , Factorization method
Journal title :
INTERNATIONAL JOURNAL OF COMPUTER VISION
Journal title :
INTERNATIONAL JOURNAL OF COMPUTER VISION