Precise Estimation of High-Dimensional Distribution and Its Application to
Face Recognition
Shinichiro Omachi, Fang Sun, and Hirotomo Aso
Proceedings 17th International Conference on Pattern Recognition (ICPR2004),
vol.1, pp.220-223, August 2004
Abstract
In statistical pattern recognition, it is important to estimate true
distribution of patterns precisely to obtain high recognition accuracy.
Normal mixtures are sometimes used for representing distributions.
However, precise estimation of the parameters of normal mixtures
requires a great number of sample patterns, especially for high
dimensional vectors.
For some pattern recognition problems, such as face recognition,
very high dimensional feature vectors are necessary and there are
always not enough training samples compared with the dimensionality.
We present a method to estimate the distributions based on normal
mixtures with small number of samples.
The proposed algorithm is applied to face recognition problem which
requires high dimensional feature vectors.
Experimental results show the effectiveness of the proposed algorithm.