Myvideo

Guest

Login

Learning to Walk in the Real World with Minimal Human Effort

Uploaded By: Myvideo
1 view
0
0 votes
0

Authors: Sehoon Ha, Peng Xu, Zhenyu Tan, Sergey Levine, Jie Tan Paper: Abstract: Reliable and stable locomotion has been one of the most fundamental challenges for legged robots. Deep reinforcement learning (deep RL) has emerged as a promising method for developing such control policies autonomously. In this paper, we develop a system for learning legged locomotion policies with deep RL in the real world with minimal human effort. The key difficulties for on-robot learning

Share with your friends

Link:

Embed:

Video Size:

Custom size:

x

Add to Playlist:

Favorites
My Playlist
Watch Later