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Deep Learning for Facial Action Unit Detection Under Large Head Poses

机译:大头姿势下面部动作单位检测深度学习

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Facial expression communicates emotion, intention, and physical state, and regulates interpersonal behavior. Automated face analysis (AFA) for the detection, synthesis, and understanding of facial expression is a vital focus of basic research with applications in behavioral science, mental and physical health and treatment, marketing, and human-robot interaction among other domains. In previous work, facial action unit (AU) detection becomes seriously degraded when head orientation exceeds 15° to 20°. To achieve reliable AU detection over a wider range of head pose, we used 3D information to augment video data and a deep learning approach to feature selection and AU detection. Source video were from the BP4D database (n = 41) and the FERA test set of BP4D-extended (n = 20). Both consist of naturally occurring facial expression in response to a variety of emotion inductions. In augmented video, pose ranged between -18° and 90° for yaw and between -54° and 54° for pitch angles. Obtained results for action unit detection exceeded state-of-the-art, with as much as a 10% increase in F1 measures.
机译:面部表情沟通情感,意图和身体状态,并调节人际行为。用于检测,合成和对面部表情的自动面分析(AFA)是对行为科学,心理和身体健康和治疗,营销和人体机器人互动的基础研究的重要焦点。在先前的工作中,当头向超过15°至20°时,面部动作单位(AU)检测变得严重劣化。为了在更广泛的头部姿势上获得可靠的AU检测,我们使用3D信息来增加视频数据和专业选择和Au检测的深度学习方法。源视频来自BP4D数据库(n = 41)和BP4D-Extended(n = 20)的Fera测试集。两者都是由自然发生的面部表情组成,以应对各种情绪诱导。在增强视频中,偏航的姿势在-18°和90°之间,俯仰角度为-54°和54°。获得的动作单位检测结果超过了最先进的,F1措施增加了10%。

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