Abstract :
A new algorithm for object classification based on an extension of the Fisher´s discriminant analysis is presented. Object recognition algorithms using the standard Fisher´s algorithm, such as the Fisherface, train the classifier using sample-class pairs, where, for the classes, object categories determined in the application systems are used directly. In contrast, the new algorithm automatically produces subclasses, within each predetermined category that are actually used for classification, via unsupervised learning. In order to perform this, we combine the Fisher´s discriminant analysis with the Akaike information criterion, optimizing the class configuration, i.e. sample-subclass correspondences, and the feature extraction function simultaneously, thereby improving the potential of linear separability. By applying this new method to face recognition, we show how it outperforms the traditional Fisher-based method.
Keywords :
face recognition; feature extraction; image classification; learning (artificial intelligence); object recognition; optimisation; Fisher discriminant analysis; class configuration; face recognition; feature extraction function; feature space; object classification; object recognition; unsupervised learning; Algorithm design and analysis; Cities and towns; Classification algorithms; Covariance matrix; Face recognition; Feature extraction; Humans; Object recognition; Pattern recognition; Unsupervised learning;