论文标题
通过自我监督环境综合学习真实世界自主导航
Learning Real-world Autonomous Navigation by Self-Supervised Environment Synthesis
论文作者
论文摘要
机器学习方法最近以数据驱动的方式启用了移动机器人的自主导航。由于大多数基于学习的导航系统都是在人为创建的培训环境中生成的数据(在实际部署实际部署的过程中)的培训,因此,机器人将不可避免地会遇到看不见的场景,而这些场景不受培训分配,因此导致现实世界中的差异不佳。另一方面,现实世界中的直接培训通常不安全且效率低下。为了解决这个问题,我们介绍了自我监督的环境合成(SES),在该环境综合(SES)之后,在实现安全和效率要求的现实部署后,自主移动机器人可以利用现实世界部署的经验,重建导航方案,并在模拟中综合代表性培训环境。这些合成环境中的培训会改善现实世界的未来表现。 SES在合成的代表性仿真环境中的有效性和改善现实导航性能通过高保真,现实的模拟器和物理机器人的小规模部署来评估。
Machine learning approaches have recently enabled autonomous navigation for mobile robots in a data-driven manner. Since most existing learning-based navigation systems are trained with data generated in artificially created training environments, during real-world deployment at scale, it is inevitable that robots will encounter unseen scenarios, which are out of the training distribution and therefore lead to poor real-world performance. On the other hand, directly training in the real world is generally unsafe and inefficient. To address this issue, we introduce Self-supervised Environment Synthesis (SES), in which, after real-world deployment with safety and efficiency requirements, autonomous mobile robots can utilize experience from the real-world deployment, reconstruct navigation scenarios, and synthesize representative training environments in simulation. Training in these synthesized environments leads to improved future performance in the real world. The effectiveness of SES at synthesizing representative simulation environments and improving real-world navigation performance is evaluated via a large-scale deployment in a high-fidelity, realistic simulator and a small-scale deployment on a physical robot.