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In this paper, we have explored the effect of pose normalization for cross-pose facial expression recognition. We have first presented an expression preserving face frontalization method. After face frontalization step, for facial expression representation and classification, we have employed both a traditional approach, by using hand-crafted features, namely local binary patterns, in combination with support vector machine classification and a relatively more recent approach based on convolutional neural networks. To evaluate the impact of face frontalization on facial expression recognition performance, we have conducted cross-pose, subject-independent expression recognition experiments using the BU3DFE database. Experimental results show that pose normalization improves the performance for cross-pose facial expression recognition. Especially, when local binary patterns in combination with support vector machine classifier is used, since this facial expression representation and classification does not handle pose variations, the obtained performance increase is significant. Convolutional neural networks based approach is found to be more successful handling pose variations, when it is fine-tuned on a dataset that contains face images with varying pose angles. Its performance is further enhanced by benefiting from face frontalization.
Lukas Vogelsang, Marin Vogelsang
Touradj Ebrahimi, Yuhang Lu, Zewei Xu
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