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Multi-Channel Pose-Aware Convolution Neural Networks for Multi-View Facial Expression Recognition

机译:多通道姿势感知卷积神经网络,用于多视图面部表情识别

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Although tremendous strides have been made in facial expression recognition(FER), recognizing facial expressions in non-frontal views remains an open challenge due to the limited access to large scale training data with various poses. To make full use of the limited data, we propose a novel multi-channel pose-aware convolution neural network (MPCNN) that consists of three parts: the multi-channel feature extraction, jointly multi-scale feature fusion, and the pose-aware recognition. The feature extraction part has 3 sub-CNNs and it learns convolutional features from different features. The joint fusion part fuses multi-scale features to enhance high-level feature representation in a hierarchical way. The fused features are fed to the pose-aware recognition part that includes pose-specific recognition branches and a pose estimation sub-network. According to the estimated pose, MPCNN finally classifies the facial expression through a conditional weighted combination of the pose-specific recognition branches. MPCNN is end-to-end trainable by minimizing the joint loss of pose and expression recognition. We evaluated the proposed method on two public multi-view FER datasets (BU-3DFE and KDEF) and a FER dataset in the wild (SFEW). The experimental results demonstrate that MPCNN outperforms the state-of-the-art FER methods with both within-dataset and cross-dataset settings.
机译:虽然在面部表情识别(FER)中已经进行了巨大的进步,但识别非正面视图中的面部表情仍然是由于对各种姿势的大规模培训数据有限的访问而导致的开放挑战。要充分利用有限的数据,我们提出了一种新的多通道姿势感知卷积神经网络(MPCNN),包括三个部分:多通道特征提取,共同多尺度特征融合,以及姿势感知认出。特征提取部分具有3个子CNN,它学习来自不同特征的卷积特征。联合融合部分熔化多尺度特征,以提高分层方式的高级特征表示。融合特征被馈送到包括姿势特定识别分支和姿势估计子网的姿势感知识别部分。根据估计的姿势,MPCNN最后通过姿势特异性识别分支的条件加权组合对面部表情进行分类。 MPCNN通过最大限度地减少姿势和表达识别的联合丧失来实现端到端可训练。我们在两种公共多视图FER数据集(BU-3DFE和KDEF)上评估了所提出的方法,以及野外(SFEW)的FER数据集。实验结果表明,MPCNN在数据集内和交叉数据集设置内具有最先进的FER方法。

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