Bilateral hemiface feature representation learning for pose robust facial expression recognition

Wissam J. Baddar, Yong Man Ro
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引用次数: 1

Abstract

We propose a bilateral hemiface feature representation learning via convolutional neural networks (CNNs) for pose robust facial expression recognition. The proposed method considers two characteristics of facial expressions. First, features from local patches are more robust to pose variations. Second, human faces are bilaterally symmetrical on left and right hemifaces. To incorporate those characteristics, a CNN is devised to learn feature representations from local patches. Then, feature representations are learned from each hemiface separately. To reduce the effect of self-occlusion, a shared feature representation is learned by combining both hemiface feature representations. The shared feature representation adaptively learns to utilize the hemiface feature representations according to the head pose. Experiments conducted on the Multi-PIE dataset showed that the proposed bilateral hemiface feature representation is pose robust and compares favorably to state-of-the-art methods.
面向姿态鲁棒性面部表情识别的双侧半脸特征表征学习
我们提出了一种基于卷积神经网络(cnn)的双侧面部特征表征学习方法,用于姿态鲁棒性面部表情识别。该方法考虑了面部表情的两个特征。首先,来自局部补丁的特征对姿态变化更健壮。第二,人的左右脸是对称的。为了结合这些特征,CNN被设计成从局部补丁中学习特征表示。然后,分别从每个半面学习特征表示。为了减少自遮挡的影响,将两个半面特征表示结合起来学习共享特征表示。共享特征表示根据头部姿态自适应学习利用半脸特征表示。在Multi-PIE数据集上进行的实验表明,所提出的双侧半面特征表示具有鲁棒性,与现有方法相比具有优势。
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