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Cross-Dataset Facial Expression Recognition based on Arousal-Valence Emotion Model and Transfer Learning Method

机译:基于Arousal Valence情感模型和转移学习方法的跨数据集面部表情识别

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Traditional facial expression recognition methods assume that facial expression in the training and testing sets are collected under the same condition such that they are independent and identically distributed. However, the assumption is not satisfied in many real applications. This problem is referred to as cross-dataset facial expression recognition. On the other hand, the traditional facial expression recognition methods are based on basic emotion theory proposed by Ekman. Unfortunately, the theory is limited to express diverse and subtle emotion. To solve the problem of the cross-dataset facial expression recognition and enrich the emotion expression, a transfer learning algorithm TPCA and arousal-valence emotional model are adopted in this paper. A new facial emotion recognition method based on TPCA and two-level fusion is proposed, which combine weight fusion and correlation fusion between arousal and valence to improve the recognition performance under cross-dataset scenarios. The contrast experimental results show that the proposed method can get better recognition result than the traditional methods.
机译:传统的面部表情识别方法假设在相同的条件下收集培训和测试集中的面部表情,使得它们是独立的并且相同分布。但是,在许多真实应用中,假设不满足。此问题被称为跨数据集面部表情识别。另一方面,传统的面部表情识别方法基于Ekman提出的基本情感理论。不幸的是,该理论仅限于表达多样化和微妙的情感。为了解决跨数据集面部表情识别和丰富情绪表达的问题,本文采用了转移学习算法TPCA和唤醒性情绪情绪模型。提出了一种基于TPCA和两级融合的新的面部情感识别方法,它与唤醒和价之间的权重融合和相关融合组合在交叉数据集方案下提高了识别性能。对比实验结果表明,该方法可以获得比传统方法更好的识别结果。

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