Constrained Joint Cascade Regression Framework for Simultaneous Facial Action Unit Recognition and Facial Landmark Detection

Yue Wu, Q. Ji
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引用次数: 73

Abstract

Cascade regression framework has been shown to be effective for facial landmark detection. It starts from an initial face shape and gradually predicts the face shape update from the local appearance features to generate the facial landmark locations in the next iteration until convergence. In this paper, we improve upon the cascade regression framework and propose the Constrained Joint Cascade Regression Framework (CJCRF) for simultaneous facial action unit recognition and facial landmark detection, which are two related face analysis tasks, but are seldomly exploited together. In particular, we first learn the relationships among facial action units and face shapes as a constraint. Then, in the proposed constrained joint cascade regression framework, with the help from the constraint, we iteratively update the facial landmark locations and the action unit activation probabilities until convergence. Experimental results demonstrate that the intertwined relationships of facial action units and face shapes boost the performances of both facial action unit recognition and facial landmark detection. The experimental results also demonstrate the effectiveness of the proposed method comparing to the state-of-the-art works.
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基于约束联合级联回归框架的人脸动作单元识别与人脸标记检测
级联回归框架已被证明是有效的面部特征检测。它从初始的脸型开始,逐步从局部的外观特征预测脸型更新,在下一次迭代中生成面部地标位置,直到收敛。在本文中,我们对级联回归框架进行了改进,提出了约束联合级联回归框架(CJCRF),用于同时进行面部动作单元识别和面部地标检测,这是两个相关的人脸分析任务,但很少同时使用。特别是,我们首先学习面部动作单元和面部形状之间的关系作为约束。然后,在提出的约束联合级联回归框架中,借助约束迭代更新面部地标位置和动作单元激活概率,直到收敛。实验结果表明,面部动作单元和面部形状的相互交织关系提高了面部动作单元识别和面部标志检测的性能。实验结果也证明了该方法的有效性。
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