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Real-Time Simultaneous Pose and Shape Estimation for Articulated Objects Using a Single Depth Camera

机译:使用单个深度相机的关节对象实时同时进行姿势和形状估计

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In this paper we present a novel real-time algorithm for simultaneous pose and shape estimation for articulated objects, such as human beings and animals. The key of our pose estimation component is to embed the articulated deformation model with exponential-maps-based parametrization into a Gaussian Mixture Model. Benefiting from the probabilistic measurement model, our algorithm requires no explicit point correspondences as opposed to most existing methods. Consequently, our approach is less sensitive to local minimum and well handles fast and complex motions. Extensive evaluations on publicly available datasets demonstrate that our method outperforms most state-of-art pose estimation algorithms with large margin, especially in the case of challenging motions. Moreover, our novel shape adaptation algorithm based on the same probabilistic model automatically captures the shape of the subjects during the dynamic pose estimation process. Experiments show that our shape estimation method achieves comparable accuracy with state of the arts, yet requires neither parametric model nor extra calibration procedure.
机译:在本文中,我们提出了一种新颖的实时算法,用于同时对诸如人和动物之类的关节物体进行姿势和形状估计。姿势估计组件的关键是将基于指数图参数化的关节变形模型嵌入到高斯混合模型中。得益于概率测量模型,与大多数现有方法相比,我们的算法不需要明确的点对应关系。因此,我们的方法对局部最小值不太敏感,可以很好地处理快速复杂的运动。对可公开获得的数据集的广泛评估表明,我们的方法比大多数最新的姿态估计算法具有更大的裕度,尤其是在具有挑战性的运动情况下。而且,我们基于相同概率模型的新颖形状自适应算法会在动态姿势估计过程中自动捕获对象的形状。实验表明,我们的形状估计方法可以达到与现有技术相当的精度,但既不需要参数模型也不需要额外的校准过程。

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