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A novel 2D and 3D multimodal approach for in-the-wild facial expression recognition

机译:新颖的2D和3D多模态方法用于狂野的面部表情识别

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This study proposes a novel deep learning approach for the fusion of 2D and 3D modalities in in-the-wild facial expression recognition (FER). Different from other studies, we exploit the 3D facial information in in-the-wild FER. In particular, in-the-wild 3D FER dataset is not widely available; therefore, 3D facial data are constructed from available 2D datasets thanks to recent advances in 3D face reconstruction. The 3D facial geometry features are then extracted by deep learning technique to exploit the mid-level details, which provides meaningful expression for the recognition. In addition, to demonstrate the potential of 3D data on FER, the 2D projected images of 3D faces are taken as additional input to FER. These features are then jointly fused with 2D features obtained from the original input. The fused features are then classified by support vector machines (SVMs). The results show that the proposed approach achieves state-of-the-art recognition performances on Real-World Affective Faces (RAF) and Static Facial Expressions in the Wild (SFEW 2.0), and AffectNet dataset. This approach is also applied to a 3D FER dataset, i.e. BU-3DFE, to compare the effectiveness of reconstructed and available 3D face data for FER. This is the first time such a deep learning combination of 3D and 2D facial modalities is presented in the context of in-the-wild FER. (C) 2019 Elsevier B.V. All rights reserved.
机译:这项研究提出了一种新颖的深度学习方法,用于在野外面部表情识别(FER)中融合2D和3D模式。与其他研究不同,我们在野生FER中利用3D面部信息。特别是野生3D FER数据集并不广泛。因此,由于3D人脸重建的最新进展,可从可用2D数据集中构建3D人脸数据。然后,通过深度学习技术提取3D面部几何特征,以利用中级细节,从而为识别提供有意义的表达。另外,为了展示FER上3D数据的潜力,将3D脸部的2D投影图像作为FER的附加输入。然后将这些特征与从原始输入获得的2D特征共同融合。然后通过支持向量机(SVM)对融合的特征进行分类。结果表明,该方法在现实世界中的情感面孔(RAF)和野外静态面部表情(SFEW 2.0)以及AffectNet数据集上实现了最新的识别性能。该方法也适用于3D FER数据集,即BU-3DFE,以比较重建和可用的3D人脸数据对FER的有效性。这是首次在野生FER的背景下展示3D和2D面部表情的深度学习组合。 (C)2019 Elsevier B.V.保留所有权利。

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