TY - GEN
T1 - Low-dimensional feature extraction for humanoid locomotion using kernel dimension reduction
AU - Morimoto, Jun
AU - Hyon, Sang Ho
AU - Atkeson, Christopher G.
AU - Cheng, Gordon
PY - 2008
Y1 - 2008
N2 - We propose using the kernel dimension reduction (KDR) to extract a low-dimensional feature space for humanoid locomotion tasks. Although humanoids have many degrees of freedom, task relevant feature spaces can be much smaller than the number of dimension of the original state space. We consider an application of the proposed approach to improve the locomotive performance of humanoid robots using an extracted low-dimensional state space. To improve the locomotive performance, we use a reinforcement learning (RL) framework. While RL is a useful non-linear optimizer, it is usually difficult to apply RL to real robotic systems - due to the large number of iterations required to acquire suitable policies. In this study, we use the extracted low-dimensional feature space for RL so that the learning system can improve task performance quickly. The kernel dimension reduction method allows us to extract the feature space even if the task relevant mapping is non-linear. This is an essential property to improve humanoid locomotive performance since stepping or walking dynamics involves highly nonlinear dynamics.We show that we can improve stepping and walking policies by using a RL method on an extracted feature space by using KDR.
AB - We propose using the kernel dimension reduction (KDR) to extract a low-dimensional feature space for humanoid locomotion tasks. Although humanoids have many degrees of freedom, task relevant feature spaces can be much smaller than the number of dimension of the original state space. We consider an application of the proposed approach to improve the locomotive performance of humanoid robots using an extracted low-dimensional state space. To improve the locomotive performance, we use a reinforcement learning (RL) framework. While RL is a useful non-linear optimizer, it is usually difficult to apply RL to real robotic systems - due to the large number of iterations required to acquire suitable policies. In this study, we use the extracted low-dimensional feature space for RL so that the learning system can improve task performance quickly. The kernel dimension reduction method allows us to extract the feature space even if the task relevant mapping is non-linear. This is an essential property to improve humanoid locomotive performance since stepping or walking dynamics involves highly nonlinear dynamics.We show that we can improve stepping and walking policies by using a RL method on an extracted feature space by using KDR.
UR - https://www.scopus.com/pages/publications/51649124516
U2 - 10.1109/ROBOT.2008.4543621
DO - 10.1109/ROBOT.2008.4543621
M3 - Conference contribution
AN - SCOPUS:51649124516
SN - 9781424416479
T3 - Proceedings - IEEE International Conference on Robotics and Automation
SP - 2711
EP - 2716
BT - 2008 IEEE International Conference on Robotics and Automation, ICRA 2008
T2 - 2008 IEEE International Conference on Robotics and Automation, ICRA 2008
Y2 - 19 May 2008 through 23 May 2008
ER -