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SPATIO-TEMPORAL MODELING OF FACIAL EXPRESSIONS USING GABOR-WAVELETS AND HIERARCHICAL HIDDEN MARKOV MODELS

机译:使用Gabor-小波和分层隐马尔可夫模型的面部表情时空建模

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As one of the key techniques for futuristic man-machine interface, facial expression analysis has received much attention in recent years. This paper proposes a hierarchical approach to facial expression recognition in image sequences by exploiting both spatial and temporal characteristics within the framework of hierarchical hidden Markov models (HHMMs). Human faces are automatically detected in the maximum likelihood sense. Gabor-wavelet based features are extracted from image sequences to capture the subtle changes of facial expressions. Four prototype emotions; i.e. happiness, anger, fear and sadness, are investigated using the Cohn-Kanade database and an average of 90.98% person-independent recognition rate is achieved. We also demonstrate that HHMMs outperform HMMs for modeling image sequences with multilevel statistical structure.
机译:作为未来派人机界面的关键技术之一,近年来面部表情分析受到了很多关注。本文通过利用分层隐马尔可夫模型(HHMMS)框架内的空间和时间特征来提出图像序列中的面部表情识别的分层方法。人称在最大似然感动中自动检测到。基于Gabor-小波的特征是从图像序列中提取的,以捕获面部表情的微妙变化。四个原型情绪;即,使用Cohn-Kanade数据库调查幸福,愤怒,恐惧和悲伤,平均达到90.98%的独立识别率。我们还证明了HHMMS优于与多级统计结构建模图像序列的HMM。

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