Abstract
Facial expression recognition across domains, e.g., training and testing facial images come from different facial poses, is very challenging due to the different marginal distributions between training and testing facial feature vectors. To deal with such challenging cross-domain facial expression recognition problem, a novel transductive transfer subspace learning method is proposed in this paper. In this method, a labelled facial image set from source domain is combined with an unlabelled auxiliary facial image set from target domain to jointly learn a discriminative subspace and make the class labels prediction of the unlabelled facial images, where a transductive transfer regularized least-squares regression (TTRLSR) model is proposed to this end. Then, based on the auxiliary facial image set, we train a SVM classifier for classifying the expressions of other facial images in the target domain. Moreover, we also investigate the use of color facial features to evaluate the recognition performance of the proposed facial expression recognition method, where color scale invariant feature transform (CSIFT) features associated with 49 landmark facial points are extracted to describe each color facial image. Finally, extensive experiments on BU-3DFE and Multi-PIE multiview color facial expression databases are conducted to evaluate the cross-database & cross-view facial expression recognition performance of the proposed method. Comparisons with state-of-the-art domain adaption methods are also included in the experiments. The experimental results demonstrate that the proposed method achieves much better recognition performance compared with the state-of-the-art methods.
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