机器人
强化学习
计算机科学
任务(项目管理)
地形
路径(计算)
人工智能
软件部署
运动规划
模拟
人机交互
计算机视觉
工程类
操作系统
生态学
程序设计语言
系统工程
生物
作者
Nikita Rudin,David Hoeller,Marko Bjelonic,Marco Hutter
出处
期刊:
日期:2022-10-23
卷期号:: 2497-2503
被引量:81
标识
DOI:10.1109/iros47612.2022.9981198
摘要
The common approach for local navigation on challenging environments with legged robots requires path planning, path following and locomotion, which usually requires a locomotion control policy that accurately tracks a commanded velocity. However, by breaking down the navigation problem into these sub-tasks, we limit the robot's capabilities since the individual tasks do not consider the full solution space. In this work, we propose to solve the complete problem by training an end-to-end policy with deep reinforcement learning. Instead of continuously tracking a precomputed path, the robot needs to reach a target position within a provided time. The task's success is only evaluated at the end of an episode, meaning that the policy does not need to reach the target as fast as possible. It is free to select its path and the locomotion gait. Training a policy in this way opens up a larger set of possible solutions, which allows the robot to learn more complex behaviors. We compare our approach to velocity tracking and additionally show that the time dependence of the task reward is critical to successfully learn these new behaviors. Finally, we demonstrate the successful deployment of policies on a real quadrupedal robot. The robot is able to cross challenging terrains, which were not possible previously, while using a more energy-efficient gait and achieving a higher success rate. Supplementary videos can be found on the project website: https://sites.google.com/leggedrobotics.com/end-to-end-loco-navigation
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