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Gaussian Process Dynamical Models for Emotion Recognition

机译:情绪识别的高斯过程动力学模型

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We describe a method for dynamic emotion recognition from facial expression sequences. Our model is based on learning a latent space using the Gaussian Process Latent Variable Model (GP-LVM), encapsulating facial landmarks shapes which describe a given facial expression. We incorporate the dynamic model by learning the latent representation, with the aim to respect the data's dynamics (facial shapes should maintain their correspondence along time). Then, a Gaussian process classifier is implemented to evaluate the relevance of the latent space features in the emotion recognition task. The results show that the proposed method can efficiently model a dynamic facial emotion and recognize with high accuracy a facial emotion sequence.
机译:我们描述了一种从面部表情序列进行动态情感识别的方法。我们的模型基于使用高斯过程潜在变量模型(GP-LVM)学习潜在空间的过程,其中封装了描述给定面部表情的面部界标形状。我们通过学习潜在表示来合并动态模型,以尊重数据的动态性(面部形状应随时间保持对应关系)。然后,实施高斯过程分类器以评估潜在空间特征在情感识别任务中的相关性。结果表明,该方法能够有效地对动态的面部表情进行建模,并能高精度地识别出面部表情序列。

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