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3D Facial Expression Recognition Using Multi-channel Deep Learning Framework

机译:3D使用多通道深度学习框架的面部表情识别

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Facial expression offers an important way of detecting the affective state of a human being. It plays a major role in various fields such as the estimation of students' attention level in online education, intelligent transportation systems and interactive games. This paper proposes a facial expression recognition system in which two channels of featured images are used to represent a 3D facial scan. Features are extracted from the local binary pattern and local directional pattern using a fine-tuned pre-trained AlexNet and a shallow convolutional neural network. The feature sets are then fused together using canonical correlation analysis. The fused feature set is fed into a multi-support vector machine (mSVM) classifier to classify the expressions into seven basic categories: anger, disgust, fear, happiness, neutral, sadness and surprise. Experiments were carried out on the Bosphorus database using tenfold cross-validation with mutually exclusive training and testing samples. The results show an average accuracy of 87.69% using an mSVM classifier with a polynomial kernel and demonstrate that the system performs better by characterizing the peculiarities in facial expressions than alternative state-of-the-art approaches.
机译:面部表情提供了一种检测人类情感状态的重要途径。它在各种领域发挥着重要作用,例如在线教育,智能交通系统和互动游戏的学生注意力级别。本文提出了一种面部表情识别系统,其中两个特色图像用于表示3D面部扫描。使用微调预训练的亚历尼网和浅卷积神经网络,从局部二进制模式和局部方向模式中提取特征。然后使用规范相关分析将特征集融合在一起。融合功能集被馈送到多支持向量机(MSVM)分类器中,以将表达式分类为七个基本类别:愤怒,厌恶,恐惧,幸福,中立,悲伤和惊喜。使用具有相互排斥的训练和测试样品的十倍交叉验证在Bosphorus数据库上进行实验。结果使用具有多项式内核的MSVM分类器的平均精度为87.69%,并证明系统通过表征面部表情中的特性而不是替代最先进的方法来表现更好。

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