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Pose-independent Facial Action units Recognition with Attention Enhanced Residual Mapping

机译:与姿势无关的面部动作单位的识别与注意力增强的残差映射

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Facial action units (AU) recognition is an essential issue of affective computing, which is important to modern human-computer interaction and virtual reality. Recent advances in deep learning have shown great achievements in facial action unit recognition. However, the conventional approaches are sensitive to the pose of head. To tackle this limitation, we propose a pose-independent AU recognition approach based on attention enhanced deep residual mapping. In the deep feature space, the non-frontal face is mapped to frontal face through attention enhanced residual addition to improve the performance of non-frontal AU recognition. The network consist of three parts: the base network, the residual mapping module and the channel attention enhanced module. The base network is the fine-tuned VGG-Face which are trained with frontal faces. Then, the residual mapping and channel-wise attention mechanism are proposed and introduced into the deep feature space to learn the AU consistent features of faces in different poses. The non-frontal facial features are combined with the residual to map it to frontal face. The channel-wise attention mechanism enables the network to understand which features are more important for the facial pose mapping process. We have demonstrated the effectiveness of our approach on FERA2017 dataset. The experiment results have shown that our approach has improved the face recognition performance.
机译:面部动作单元(AU)的识别是情感计算的一个基本问题,这对于现代人机交互和虚拟现实至关重要。深度学习的最新进展在面部动作单元识别方面显示了巨大的成就。然而,常规方法对头部的姿势敏感。为了解决这一局限性,我们提出了一种基于注意力增强的深度残差映射的与姿势无关的AU识别方法。在深度特征空间中,通过注意增强的残差加法将非正面人脸映射到正面,以改善非正面AU识别的性能。网络由三部分组成:基础网络,残差映射模块和频道关注增强模块。基本网络是经过微调的VGG-Face,使用正面进行训练。然后,提出了残差映射和逐通道注意机制,并将其引入深度特征空间,以学习不同姿势下人脸的AU一致特征。非额叶面部特征与残差相结合,以将其映射到额叶面部。逐通道注意机制使网络能够了解哪些功能对于面部姿势映射过程更重要。我们已经证明了我们的方法在FERA2017数据集上的有效性。实验结果表明,我们的方法提高了人脸识别性能。

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