2009 IEEE International Conference on
Systems, Man, and Cybernetics |
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Abstract
Beauty is a universal concept which has long been explored by philosophers, artists and psychologists, but there are few implementations of automated facial beauty assessment in computational science. In this paper, we develop an automated Chinese female facial beauty classification system through the application of machine learning algorithm of SVM (Support Vector Machine). We present a simple but effective feature extraction for facial beauty classification. 17 geometric features are designed to abstractly represent each facial image. The experiment is based on 510 facial images, high accuracy of 95.3% is obtained for two class classification (beautiful or not), but the accuracy of 4 class classification is 77.9% by SVM. The results clearly show that the notion of beauty perceived by human can also be learned by machine through using supervised learning techniques. Furthermore, the finding of big gap between the accuracy of 2 levels classification and 4 levels classification is interesting and surprising, the high accuracy naturally leads to the conclusion that there indeed exists simplicity and objectiveness underlying the judgment of aesthetical ideal facial attractiveness. In contrast, the relatively low accuracy for 4 levels classification indicates that the assessment of other levels of aesthetical ideal facial attractiveness cannot be accomplished only by using simple feature vectors, instead, it is more complex and diversified, and at least to some extent, may be subjective.