A Modification of Eigenvalues to Compensate Estimation Errors of
Eigenvectors
Masakazu Iwamura, Shin'ichiro Omachi, and Hirotomo Aso
Proceedings 15th International Conference on Pattern Recognition (ICPR2000),
vol.2, pp.378-381, September 2000
Abstract
In statistical pattern recognition, parameters of distributions are usually
estimated from training samples.
It is well known that shortage of training samples causes estimation errors
which reduce recognition accuracy.
By studying estimation errors of eigenvalues, various methods of avoiding
recognition accuracy reduction have been proposed.
However, estimation errors of eigenvectors have not been considered enough.
In this paper, we investigate estimation errors of eigenvectors to show
these errors are another factor of recognition performance reduction.
We propose a new method for modifying eigenvalues in order to reduce bad
influence caused by estimation errors of eigenvectors.
Effectiveness of the method is shown by experimental results.