Planetary rover exploration is attracting renewed interest with several upcoming space missions to the Moon and Mars. However, a substantial amount of data from prior missions remain underutilized for path planning and autonomous navigation research. As a result, there is a lack of space mission-based planetary datasets, standardized benchmarks, and evaluation protocols. In this paper, we take a step towards coordinating these three research directions in the context of planetary rover path planning. We propose the first two large planar benchmark datasets, MarsPlanBench and MoonPlanBench, derived from high-resolution digital terrain images of Mars and the Moon. In addition, we set up classical and learned path planning algorithms, in a unified framework, and evaluate them on our proposed datasets and on a popular planning benchmark. Through comprehensive experiments, we report new insights on the performance of representative path planning algorithms on planetary terrains, for the first time to the best of our knowledge. Our results show that classical algorithms can achieve up to 100% global path planning success rates on average across challenging terrains such as Moon's north and south poles. This suggests, for instance, why these algorithms are used in practice by NASA. Conversely, learning-based models, although showing promising results in less complex environments, still struggle to generalize to planetary domains. To serve as a starting point for fundamental path planning research, our code and datasets will be released at: https://github.com/mchancan/PlanetaryPathBench.
翻译:随着多项即将开展的月球和火星太空任务,行星漫游车探测正重新引发研究热潮。然而,大量来自先前任务的数据在路径规划与自主导航研究中仍未得到充分利用。因此,目前缺乏基于太空任务的行星数据集、标准化基准及评估协议。本文在行星漫游车路径规划的背景下,朝着协调这三个研究方向迈出一步。我们提出了首个大型平面基准数据集MarsPlanBench与MoonPlanBench,其源自火星与月球的高分辨率数字地形图像。此外,我们在统一框架中建立了经典与基于学习的路径规划算法,并在我们提出的数据集及一个常用规划基准上对其进行了评估。通过全面实验,我们首次(据我们所知)报告了代表性路径规划算法在行星地形上性能的新见解。结果表明,经典算法在月球南北极等挑战性地形上平均可实现高达100%的全局路径规划成功率。这解释了例如NASA在实践中采用这些算法的原因。相反,基于学习的模型虽然在较简单环境中展现出有希望的结果,但在泛化至行星领域时仍存在困难。为服务于基础路径规划研究的起点,我们的代码与数据集将在以下地址发布:https://github.com/mchancan/PlanetaryPathBench。