A Discriminant Function Considering Normality Improvement of the Distribution
Hidenori Ujiie, Shinichiro Omachi, and Hirotomo Aso
Proceedings 16th International Conference on Pattern Recognition (ICPR2002),
vol.2, pp.224-227, August 2002
Abstract
In statistical pattern recognition, class conditional probability
distribution is estimated and used for classification.
Since it is impossible to estimate the true distribution,
usually the distribution is assumed to be a certain
parametric model like normal distribution and
the parameters that represent the distribution are estimated from
training data.
However there is no guarantee that the model is appropriate
for the given data.
In this paper, we propose a method to improve classification accuracy by
transforming the distribution of the given data closer to the normal
distribution using data transformation.
We show how to modify the traditional quadratic discriminant
function (QDF) in order to deal with the transformed data.
Finally, we present some properties of the transformation and
show the effectiveness of the proposed method through experiments with
public databases.