Autonomous exploration of unknown environments is a vital function for robots and has applications in a wide variety of scenarios. Our focus primarily lies in its application for the task of efficient coverage of unknown environments. Various methods have been proposed for this task and frontier based methods are an efficient category in this class of methods. Efficiency is of utmost importance in exploration and heuristics play a critical role in guiding our search. In this work we demonstrate the ability of heuristics that are learnt by imitating clairvoyant oracles. These learnt heuristics can be used to predict the expected future return from selected states without building search trees, which are inefficient and limited by on-board compute. We also propose an additional filter-based heuristic which results in an enhancement in the performance of the frontier-based planner with respect to certain tasks such as coverage planning.
翻译:自主探索未知环境对于机器人来说是一项至关重要的功能,在各种情景中都有各种应用。我们的重点主要在于应用它来有效覆盖未知环境的任务。已经为这项任务提出了各种方法,基于边界的方法是这一类方法中的一个有效类别。在探索中,效率至关重要,牛皮学在指导我们的搜索中发挥着关键作用。在这项工作中,我们展示了通过模仿光伏扬特或触角所学会的牛皮学能力。这些学到的超自然学可以用来预测来自选定国家的预期未来回报,而没有建筑搜索树,这些树效率低下,并且受到机上计算的限制。我们还提议增加一种基于过滤的超自然学,从而导致边境规划师在诸如覆盖规划等某些任务方面的绩效得到提高。