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Multi-Label Action Unit Detection on Multiple Head Poses with Dynamic Region Learning

机译:基于动态区域学习的多个头部姿势的多标签动作单元检测

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This paper presents a multi-label Action Unit (AU) detection method applied on multi-pose facial images. Action Unit detection on multiple head poses is an issue that robust AU detectors must deal with, as it is uncommon for a person to maintain always the same pose when displaying facial expressions. To this end, this work proposes a region learning approach, that dynamically creates regions of interest inside a convolutional neural network (CNN) using facial landmark points. The dynamic region learning (DRL) ensures that each AU is in the center of the region, and also follows the head pose movement. The DRL is built on top of the VGG-Face network, and transfer-learning is used to start the training. The experiments were conducted on the Facial Expression Recognition and Analysis Challenge (FERA 2017) database, which contains nine different head poses. The results show that the dynamic region learning is able to adapt to the nine poses in the database, improving the state-of-the-art with an an average F1-score of 0.582.
机译:本文提出了一种用于多姿态人脸图像的多标签动作单元(AU)检测方法。多个头部姿势上的动作单元检测是坚固的AU检测器必须处理的一个问题,因为在显示面部表情时人们始终保持相同的姿势并不常见。为此,这项工作提出了一种区域学习方法,该方法使用面部界标点在卷积神经网络(CNN)内部动态创建感兴趣的区域。动态区域学习(DRL)可确保每个AU位于该区域的中心,并且还跟随头部姿势运动。 DRL构建在VGG-Face网络的顶部,并且使用转移学习来开始培训。实验是在面部表情识别和分析挑战(FERA 2017)数据库上进行的,该数据库包含九种不同的头部姿势。结果表明,动态区域学习能够适应数据库中的9个姿势,以平均F来改进最新技术。 1 得分为0.582。

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