IEEE International Conference on Robotics and Automation (ICRA) 2017
IEEE Access
Fig1 Results in different kinds of postures
Abstract:
The goal of human-robot motion retargeting is to let a robot follow the movements performed by a human subject. This is traditionally achieved by applying the estimated poses from a human pose tracking system to a robot via explicit joint mapping strategies. In this paper, we present a novel approach that combine the human pose estimation and the motion retarget procedure in a unified generative framework.
A 3D parametric human-robot model is proposed that has the specific joint and stability configurations as a robot while its shape resembles a human subject. Using a single depth camera to monitor human pose, we use its raw depth map as input and drive the human-robot model to fit the input 3D point cloud. The calculated joint angles of the fitted model can be applied onto the robots for retargeting. The robot’s joint angles, instead of fitted individually, are fitted globally so that the transformed surface shape is as consistent as possible to the input point cloud. The robot configurations including its skeleton proportion, joint limitation, and DoF are enforced implicitly in the formulation. No explicit and pre-defined joints mapping strategies are needed.
This framework is tested with both simulations and real robots that have different skeleton proportion and DoFs compared with human to show its effectiveness for motion retargeting.
Citation:
@inproceedings{wang2017generative, title={A generative human-robot motion retargeting approach using a single depth sensor}, author={Wang, Sen and Zuo, Xinxin and Wang, Runxiao and Cheng, Fuhua and Yang, Ruigang}, booktitle={2017 IEEE International Conference on Robotics and Automation (ICRA)}, pages={5369--5376}, year={2017}, organization={IEEE}}