BriefGPT.xyz
Nov, 2016
从经验和模仿中学习灵巧的操作策略
Learning Dexterous Manipulation Policies from Experience and Imitation
HTML
PDF
Vikash Kumar, Abhishek Gupta, Emanuel Todorov, Sergey Levine
TL;DR
本研究探索了学习控制方法对于机械手进行非抓握性操作的影响,通过深度学习和最近邻等方法实现了控制器的泛化。研究表明仅基于时间轨迹的控制器仅需要少量训练数据即可构建,同时多个控制器可以进行插值形成更全局的控制器。
Abstract
We explore learning-based approaches for
feedback control
of a dexterous five-finger hand performing
non-prehensile manipulation
. First, we learn local controllers that are able to perform the task starting at a
→