Title :
Evolutionary pursuit and its application to face recognition
Author :
Liu, Chengjun ; Wechsler, Harry
Author_Institution :
Dept. of Math. & Comput. Sci., Missouri Univ., St. Louis, MO, USA
fDate :
6/1/2000 12:00:00 AM
Abstract :
Introduces evolutionary pursuit (EP) as an adaptive representation method for image encoding and classification. In analogy to projection pursuit, EP seeks to learn an optimal basis for the dual purpose of data compression and pattern classification. It should increase the generalization ability of the learning machine as a result of seeking the trade-off between minimizing the empirical risk encountered during training and narrowing the confidence interval for reducing the guaranteed risk during testing. It therefore implements strategies characteristic of GA for searching the space of possible solutions to determine the optimal basis. It projects the original data into a lower dimensional whitened principal component analysis (PCA) space. Directed random rotations of the basis vectors in this space are searched by GA where evolution is driven by a fitness function defined by performance accuracy (empirical risk) and class separation (confidence interval). Accuracy indicates the extent to which learning has been successful, while separation gives an indication of expected fitness. The method has been tested on face recognition using a greedy search algorithm. To assess both accuracy and generalization capability, the data includes for each subject images acquired at different times or under different illumination conditions. EP has better recognition performance than PCA (eigenfaces) and better generalization abilities than the Fisher linear discriminant (Fisherfaces)
Keywords :
data compression; evolutionary computation; face recognition; generalisation (artificial intelligence); genetic algorithms; image classification; image coding; image representation; learning (artificial intelligence); principal component analysis; EP; Fisher linear discriminant; Fisherfaces; GA; PCA; adaptive representation method; class separation; confidence interval narrowing; data compression; directed random vector rotations; eigenfaces; empirical risk minimization; evolutionary pursuit; face recognition; generalization abilities; generalization ability; greedy search algorithm; image classification; image encoding; learning machine; low-dimensional whitened principal component analysis; optimal basis; pattern classification; Data compression; Displays; Face recognition; Genetic algorithms; Image coding; Lighting; Machine learning; Pattern classification; Principal component analysis; Testing;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on