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Recognizing partial facial action units based on 3D dynamic range data for facial expression recognition

机译:基于3D动态范围数据的面部表情识别单元

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Research on automatic facial expression recognition has benefited from work in psychology, specifically the Facial Action Coding System (FACS). To date, most existing approaches are primarily based on 2D images or videos. With the emergence of real-time 3D dynamic imaging technologies, however, 3D dynamic facial data is now available, thus opening up an alternative to detect facial action units in dynamic 3D space. In this paper, we investigate how to use this new modality to improve action unit (AU) detection. We select a subset of AUs from both the upper and lower parts of a facial area, apply the active appearance model (AAM) method and take the correspondence between textures and range models to track the pre-defined facial features across the 3D model sequences. A Hidden Markov Model (HMM) based classifier is employed to recognize the partial AUs. The experiments show that our 3D dynamic tracking based approach outperforms the compared 2D feature tracking based approach. The results are also comparable with the manually-picked 3D facial features based method. Finally, we extend our approach to validate the experiment for recognizing six prototypic facial expressions.
机译:自动面部表情识别的研究受益于心理学的工作,特别是面部动作编码系统(FACS)。迄今为止,大多数现有方法主要基于2D图像或视频。然而,随着实时3D动态成像技术的出现,现在可用3D动态面部数据,从而开放替代方案来检测动态3D空间中的面部动作单元。在本文中,我们调查如何使用这种新的模型来改进动作单位(AU)检测。我们从面部区域的上部和下部选择AU的子集,应用主动外观模型(AAM)方法,并采用纹理和范围模型之间的对应关系,以跟踪3D模型序列上的预定义面部特征。采用隐马尔可夫模型(HMM)基于分类器来识别部分AU。实验表明,我们的3D动态跟踪的方法优于基于2D特征跟踪的方法。结果也与基于手动挑选的3D面部特征的方法相当。最后,我们扩展了我们的方法来验证识别六种原型面部表情的实验。

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