Title :
Rebalance strategies for humanoids walking by foot positioning compensator based on adaptive heteroscedastic SpGPs
Author :
Xu Tao ; Chen Qijun ; Cai Zhiqiang
Abstract :
To solve the rebalance problem of a full-body humanoid walking, an adaptive foot positioning compensation approach is proposed. To obtain a more precise initial policy, a constrained dynamics model is used to generate the offline policy. A heteroscedastic sparse Gaussian process is applied for online calculation of the foot positioning policy. In order to make the generated policy to adapt with the full-body dynamics, a sample-efficient MAP-like updating method for the heteroscedastic sparse Gaussian process model is also proposed. Experiments on both simulation and a real full-body humanoid are developed to show the performance of the final foot positioning policy. With the help of proposed method, the full-body humanoid robot succeeded walking down an elastic deformable platform and several obvious compensation foot steps can be observed for the robot to retrieve its balance.
Keywords :
Gaussian processes; humanoid robots; mobile robots; position control; robot dynamics; adaptive foot positioning compensation; adaptive heteroscedastic sparse Gaussian process model; constrained dynamics model; elastic deformable platform; final foot positioning policy; foot positioning compensator; full-body dynamics; offline policy; online calculation; real full body humanoid walking; rebalance strategy; sample efficient MAP-like updating method; Adaptation models; Foot; Humanoid robots; Legged locomotion; Mathematical model; Trajectory;
Conference_Titel :
Robotics and Automation (ICRA), 2011 IEEE International Conference on
Conference_Location :
Shanghai
Print_ISBN :
978-1-61284-386-5
DOI :
10.1109/ICRA.2011.5979889