首页 /研究 /Sample-efficient Adversarial Imitation Learning from Observation
LEARNING

Sample-efficient Adversarial Imitation Learning from Observation

Faraz Torabi, Sean Geiger, Garrett Warnell, Peter Stone

发表年份
2019
访问权限
开放获取

摘要

Imitation from observation is the framework of learning tasks by observing demonstrated state-only trajectories. Recently, adversarial approaches have achieved significant performance improvements over other methods for imitating complex behaviors. However, these adversarial imitation algorithms often require many demonstration examples and learning iterations to produce a policy that is successful at imitating a demonstrator's behavior. This high sample complexity often prohibits these algorithms from being deployed on physical robots. In this paper, we propose an algorithm that addresses the sample inefficiency problem by utilizing ideas from trajectory centric reinforcement learning algorithms. We test our algorithm and conduct experiments using an imitation task on a physical robot arm and its simulated version in Gazebo and will show the improvement in learning rate and efficiency.

关键词

cs.LGstat.ML

相关论文

查看 LEARNING 分类全部论文