资源论文Real-time Simultaneous Pose and Shape Estimation for Articulated Objects Using a Single Depth Camera

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

2019-12-12 | |  75 |   45 |   0

Abstract

In this paper we present a novel real-time algorithmfor simultaneous pose and shape estimation for articu-lated objects, such as human beings and animals. Thekey 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 algorithmrequires 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.

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