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Joint head pose and facial landmark regression from depth images

机译:深度图像的联合头部姿势和面部界标回归

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摘要

Abstract This paper presents a joint head pose and facial landmark regression method with input from depth images for realtime application. Our main contributions are: firstly, a joint optimization method to estimate head pose and facial landmarks, i.e., the pose regression result provides supervised initialization for cascaded facial landmark regression, while the regression result for the facial landmarks can also help to further refine the head pose at each stage. Secondly, we classify the head pose space into 9 sub-spaces, and then use a cascaded random forest with a global shape constraint for training facial landmarks in each specific space. This classification-guided method can effectively handle the problem of large pose changes and occlusion. Lastly, we have built a 3D face database containing 73 subjects, each with 14 expressions in various head poses. Experiments on challenging databases show our method achieves state-of-the-art performance on both head pose estimation and facial landmark regression.
机译:摘要本文提出了一种基于深度图像输入的联合头部姿态和面部界标回归方法,用于实时应用。我们的主要贡献是:首先,一种联合优化方法来估计头部姿势和面部地标,即姿势回归结果为级联的面部地标回归提供了监督初始化,而面部地标的回归结果也有助于进一步优化头部在每个阶段摆姿势。其次,我们将头部姿势空间分为9个子空间,然后使用具有全局形状约束的级联随机森林来训练每个特定空间中的人脸标志。这种分类指导的方法可以有效地处理较大的姿势变化和遮挡问题。最后,我们建立了一个3D人脸数据库,其中包含73个对象,每个对象以不同的头部姿势表达14种表情。在具有挑战性的数据库上进行的实验表明,我们的方法在头部姿态估计和面部界标回归上均达到了最新水平。

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