Action unit reconstruction of occluded facial expression

Orange Technologies(2014)

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摘要
Facial occlusion is a critical issue that may dramatically degrade the performance on facial expression-based emotion recognition. In this study, the Error Weighted Cross-Correlation Model (EWCCM) is employed to predict the facial Action Unit (AU) under partial facial occlusion from non-occluded facial regions for facial geometric feature reconstruction. In EWCCM, a Gaussian Mixture Model (GMM)-based Cross-Correlation Model (CCM) is first adopted to construct the statistical dependency among features from paired facial components such as eyebrows-cheeks of the non-occluded regions for AU prediction of the occluded region. A Bayesian classifier weighting scheme is then used to enhance the AU prediction accuracy considering the contributions of the GMM-based CCMs. Based on the predicted AU, a regression fusion scheme is proposed to reconstruct the occluded facial geometric features. Experimental results show that the proposed approach yielded satisfactory results on the NCKU-FEPO database for facial AU reconstruction.
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关键词
gaussian processes,emotion recognition,face recognition,feature extraction,image classification,image fusion,image reconstruction,regression analysis,au prediction accuracy,bayesian classifier weighting scheme,ewccm model,gaussian mixture model,ncku-fepo database,action unit reconstruction,error weighted cross-correlation model,facial action unit,facial expression-based emotion recognition,facial geometric feature reconstruction,facial occlusion,occluded facial expression,partial facial occlusion,regression fusion scheme,statistical dependency,action unit,face,accuracy,predictive models,gold
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