Autonomous exploration allows mobile robots to navigate in initially unknown territories in order to build complete representations of the environments. In many real-life applications, environments often contain dynamic obstacles which can compromise the exploration process by temporarily blocking passages, narrow paths, exits or entrances to other areas yet to be explored. In this work, we formulate a novel exploration strategy capable of explicitly handling dynamic obstacles, thus leading to complete and reliable exploration outcomes in populated environments. We introduce the concept of dynamic frontiers to represent unknown regions at the boundaries with dynamic obstacles together with a cost function which allows the robot to make informed decisions about when to revisit such frontiers. We evaluate the proposed strategy in challenging simulated environments and show that it outperforms a state-of-the-art baseline in these populated scenarios.
翻译:自主勘探允许移动机器人在最初未知的领土上航行,以建立对环境的完整描述。在许多实际应用中,环境往往包含动态障碍,这些障碍可能暂时阻塞通道、狭窄通道、出口或进入尚待探索的其他地区,从而影响勘探进程。在这项工作中,我们制定了新的探索战略,能够明确处理动态障碍,从而导致在人口居住环境中实现完整和可靠的勘探结果。我们引入动态边界概念,在边界代表未知区域,带有动态障碍,同时具有成本功能,使机器人能够就何时重新审视这些边界作出知情的决定。我们评估了挑战模拟环境的拟议战略,并表明这些假设中的战略超过了最先进的基线。