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3D Human Pose Estimation by an Annealed Two-Stage Inference Method

机译:通过退火的两阶段推断方法进行3D人类姿态估计

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This paper proposes a novel human motion capture method that locates human body joint position and reconstructs the human pose in 3D space from monocular images. We propose a two-stage framework including 2D and 3D probabilistic graphical models which can solve the occlusion problem for the estimation of human joint positions. The 2D and 3D models adopt directed acyclic structure to avoid error propagation of inference in the models. Both the 2D and 3D models utilize the Expectation Maximization algorithm to learn prior distributions of the models. An annealed Gibbs sampling method is proposed for the two-stage method to inference the maximum posteriori distributions of joint positions. The annealing process can efficiently explore the mode of distributions and find solutions in high-dimensional space. Experiments are conducted on the Human Eva dataset to show the effectiveness of the proposed method. The experimental data are image sequences of walking motion with a full 180° turn around a region, which causes occlusion of poses and loss of image observations. Experimental results show that the proposed two-stage approach can efficiently estimate more accurate human poses from monocular images.
机译:本文提出了一种新的人体运动捕获方法,该方法定位人体关节位置,并从单眼图像中重建人类姿势。我们提出了一个两级框架,包括2D和3D概率图形模型,可以解决估计人的关节位置的遮挡问题。 2D和3D模型采用指示的无循环结构,以避免误差在模型中的推断传播。 2D和3D模型都利用期望最大化算法来学习模型的先前分布。提出了一种退火的GIBBS采样方法,用于推理关节位置的最大后验分布的两级方法。退火过程可以有效地探索分布模式,并找到高维空间的解决方案。实验在人EVA数据集上进行,以显示所提出的方法的有效性。实验数据是步行运动的图像序列,整个180°绕区域转动,这导致姿势姿势和图像观察的丧失。实验结果表明,提出的两级方法可以有效地估计单眼图像的准确人类姿势。

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