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Improving dynamic facial expression recognition with feature subset selection
Authors:F Dornaika  E LazkanoB Sierra
Affiliation:a University of the Basque Country, 20018 San Sebastian, Spain
b IKERBASQUE, Basque Foundation for Science, 48011 Bilbao, Spain
Abstract:This paper addresses the dynamic recognition of basic facial expressions in videos using feature subset selection. Feature selection has been already used by some static classifiers where the facial expression is recognized from one single image. Past work on dynamic facial expression recognition has emphasized the issues of feature extraction and classification, however, less attention has been given to the critical issue of feature selection in the dynamic scenario. The main contributions of the paper are as follows. First, we show that dynamic facial expression recognition can be casted into a classical classification problem. Second, we combine a facial dynamics extractor algorithm with a feature selection scheme for generic classifiers.We show that the paradigm of feature subset selection with a wrapper technique can improve the dynamic recognition of facial expressions. We provide evaluations of performance on real video sequences using five standard machine learning approaches: Support Vector Machines, K Nearest Neighbor, Naive Bayes, Bayesian Networks, and Classification Trees.
Keywords:Dynamic facial expression recognition  Feature subset selection  Estimation of Distribution Algorithms  Machine learning approaches  Wrapper technique
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