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Facial expression recognition using HMM with observation dependent transition matrix

机译:基于HMM的人脸表情识别与依赖于观察的过渡矩阵

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An expression recognition technique is proposed based on the hidden Markov models (HMM) ability to deal with time sequential data and to provide time scale invariability as well as a learning capability. A feature vector sequence is used for this purpose, which relies on optical flow extraction, as well as directional filtering of the motion field. Segmentation and identification of important facial parts are preceding feature extraction. The HMM is enhanced with an observation dependent transition matrix, being able to cope with the dynamics of emotions and the severe complexity of expressions timing. Experimental results are included illustrating the effectiveness of this method.
机译:提出了一种基于隐马尔可夫模型(HMM)的表情识别技术来处理时序数据并提供时间尺度不变性和学习能力。为此,使用了一个特征向量序列,该序列依赖于光流提取以及运动场的方向滤波。重要面部部分的分割和识别在特征提取之前。 HMM通过依赖于观察的过渡矩阵得到增强,能够应对情绪的动态变化和表情时序的严峻复杂性。实验结果包括说明该方法的有效性。

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