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Dual-modality spatiotemporal feature learning for spontaneous facial expression recognition in e-learning using hybrid deep neural network

机译:基于混合深度神经网络的电子学习中自发表情识别的双模态时空特征学习

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摘要

Automatic facial expression recognition (FER) plays a crucial role in realizing the adaptable and individualized tutoring in affective computer-based learning environment. Although many research efforts have been conducted to enhance a greater understanding of FER, a successful accurate recognition of the spontaneous facial expressions in real e-learning environment is still challenging due to its low change in intensity and short duration. In this paper, we propose a new dual-modality spatiotemporal feature representation learning for recognizing facial expression in e-learning using the hybrid deep neural network. Except facial expression class information, representative expression states (e.g., onset, apex, offset of expressions) are utilized for expression recognition in our study. Spatiotemporal geometrical feature representations and spatial-temporal appearance feature representations are learned with a hybrid deep neural network. The dual-modality feature fusion representations are used to recognize facial expressions. The comprehensive experiments have been conducted on two spontaneous micro-expression datasets (CAS(ME)2 and CASME II). The experimental results showed that the proposed method achieved higher recognition accuracy compared to the state-of-the-art methods. Moreover, multiple metrics were adopted to provide more insight into the performance of the proposed method.
机译:自动面部表情识别(FER)在基于情感的计算机学习环境中实现适应性强和个性化的补习中起着至关重要的作用。尽管已经进行了许多研究工作来增强对FER的更多了解,但是由于其强度的低变化和较短的持续时间,在真实的电子学习环境中成功地准确识别自发面部表情仍然具有挑战性。在本文中,我们提出了一种新的双模式时空特征表示学习方法,用于使用混合深度神经网络在电子学习中识别面部表情。除面部表情分类信息外,在我们的研究中,代表性的表情状态(例如,发作,顶点,表情偏移)被用于表情识别。利用混合深度神经网络学习时空几何特征表示和时空外观特征表示。双模式特征融合表示用于识别面部表情。在两个自发的微表达数据集(CAS(ME)2和CASME II)上进行了综合实验。实验结果表明,与现有方法相比,该方法具有更高的识别精度。此外,采用了多个指标来提供对所提出方法性能的更多了解。

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