A dynamic appearance descriptor approach to facial actions temporal modeling.

IEEE T. Cybernetics(2014)

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摘要
Both the configuration and the dynamics of facial expressions are crucial for the interpretation of human facial behavior. Yet to date, the vast majority of reported efforts in the field either do not take the dynamics of facial expressions into account, or focus only on prototypic facial expressions of six basic emotions. Facial dynamics can be explicitly analyzed by detecting the constituent temporal segments in Facial Action Coding System (FACS) Action Units (AUs)-onset, apex, and offset. In this paper, we present a novel approach to explicit analysis of temporal dynamics of facial actions using the dynamic appearance descriptor Local Phase Quantization from Three Orthogonal Planes (LPQ-TOP). Temporal segments are detected by combining a discriminative classifier for detecting the temporal segments on a frame-by-frame basis with Markov Models that enforce temporal consistency over the whole episode. The system is evaluated in detail over the MMI facial expression database, the UNBC-McMaster pain database, the SAL database, the GEMEP-FERA dataset in database-dependent experiments, in cross-database experiments using the Cohn-Kanade, and the SEMAINE databases. The comparison with other state-of-the-art methods shows that the proposed LPQ-TOP method outperforms the other approaches for the problem of AU temporal segment detection, and that overall AU activation detection benefits from dynamic appearance information.
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关键词
apex au,lpq-top,dynamic appearance descriptor approach,three orthogonal planes,facial dynamics,onset au,face recognition,mmi facial expression database,human facial behavior,markov models,visual databases,offset au,cohn-kanade databases,discriminative classifier,prototypic facial expressions,temporal segment detection,unbc-mcmaster pain database,dynamic appearance descriptors,facs,sal database,cross-database experiments,markov processes,gemep-fera dataset,action unit detection,temporal consistency,semaine databases,facial action coding system action units,local phase quantization,lpq-top method,facial actions temporal modeling,database-dependent experiments
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