机器人学
人工智能
计算机科学
机器人
强化学习
移动机器人
软件部署
计算机视觉
试验台
端到端原则
实时计算
人机交互
计算机网络
操作系统
作者
Jonáš Kulhánek,Erik Derner,Robert Babuška
出处
期刊:IEEE robotics and automation letters
日期:2021-03-23
卷期号:6 (3): 4345-4352
被引量:37
标识
DOI:10.1109/lra.2021.3068106
摘要
Visual navigation is essential for many applications in robotics, from manipulation, through mobile robotics to automated driving. Deep reinforcement learning (DRL) provides an elegant map-free approach integrating image processing, localization, and planning in one module, which can be trained and therefore optimized for a given environment. However, to date, DRL-based visual navigation was validated exclusively in simulation, where the simulator provides information that is not available in the real world, e.g., the robot's position or segmentation masks. This precludes the use of the learned policy on a real robot. Therefore, we present a novel approach that enables a direct deployment of the trained policy on real robots. We have designed a new powerful simulator capable of domain randomization. To facilitate the training, we propose visual auxiliary tasks and a tailored reward scheme. The policy is fine-tuned on images collected from real-world environments. We have evaluated the method on a mobile robot in a real office environment. The training took approximately 30 hours on a single GPU. In 30 navigation experiments, the robot reached a 0.3-meter neighbourhood of the goal in more than 86.7% of cases. This result makes the proposed method directly applicable to tasks like mobile manipulation.
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