Exploration is a fundamental problem in robotics. While sampling-based planners have shown high performance, they are oftentimes compute intensive and can exhibit high variance. To this end, we propose to directly learn the underlying distribution of informative views based on the spatial context in the robot's map. We further explore a variety of methods to also learn the information gain. We show in thorough experimental evaluation that our proposed system improves exploration performance by up to 28% over classical methods, and find that learning the gains in addition to the sampling distribution can provide favorable performance vs. compute trade-offs for compute-constrained systems. We demonstrate in simulation and on a low-cost mobile robot that our system generalizes well to varying environments.
翻译:探索是机器人中的一个基本问题。 抽样规划者表现出高性能,但他们往往会计算大量时间,并可能出现很大差异。 为此,我们提议直接学习基于机器人地图空间背景的信息观点的基本分布。 我们进一步探索各种方法来学习信息收益。 我们在彻底的实验性评估中显示,我们提议的系统比经典方法提高了探索绩效高达28%,并且发现,除了抽样分布之外,学习成果可以提供有利的性能,而计算计算受限制的系统则可以进行权衡。我们在模拟和低成本移动机器人上展示,我们的系统能够把不同的环境概括为一般。