Autonomous lander missions on extraterrestrial bodies will need to sample granular material while coping with domain shift, no matter how well a sampling strategy is tuned on Earth. This paper proposes an adaptive scooping strategy that uses deep Gaussian process method trained with meta-learning to learn on-line from very limited experience on the target terrains. It introduces a novel meta-training approach, Deep Meta-Learning with Controlled Deployment Gaps (CoDeGa), that explicitly trains the deep kernel to predict scooping volume robustly under large domain shifts. Employed in a Bayesian Optimization sequential decision-making framework, the proposed method allows the robot to use vision and very little on-line experience to achieve high-quality scooping actions on out-of-distribution terrains, significantly outperforming non-adaptive methods proposed in the excavation literature as well as other state-of-the-art meta-learning methods. Moreover, a dataset of 6,700 executed scoops collected on a diverse set of materials, terrain topography, and compositions is made available for future research in granular material manipulation and meta-learning.
翻译:地球外机构的自主陆地飞行任务将需要在应对域变的同时,对颗粒材料进行取样,而不论对地球的取样战略如何完善。本文件建议采用适应式挖掘战略,利用经过元学习培训的深高山流程方法,从目标地形上有限的经验中在线学习;采用新的元培训方法,即 " 利用控制部署差距进行深元学习 " (CoDeGa),明确培训深海核心,以预测在大域变迁下强力挖掘体积。 在巴伊西亚优化后继决策框架中,拟议方法使机器人能够利用愿景和很少的在线经验,实现在分配地域上的高质量挖掘行动,在挖掘文献中提议的显著优于业绩的非适应性方法,以及其他最先进的元学习方法。此外,一套数据集集有6,700个已执行的剪辑,收集到各种材料、地形地形地形地形图谱和构成,供今后在谷仓材料操纵和元化学习中进行研究。</s>