We consider the problem of autonomous mobile robot exploration in an unknown environment, taking into account a robot's coverage rate, map uncertainty, and state estimation uncertainty. This paper presents a novel exploration framework for underwater robots operating in cluttered environments, built upon simultaneous localization and mapping (SLAM) with imaging sonar. The proposed system comprises path generation, place recognition forecasting, belief propagation and utility evaluation using a virtual map, which estimates the uncertainty associated with map cells throughout a robot's workspace. We evaluate the performance of this framework in simulated experiments, showing that our algorithm maintains a high coverage rate during exploration while also maintaining low mapping and localization error. The real-world applicability of our framework is also demonstrated on an underwater remotely operated vehicle (ROV) exploring a harbor environment.
翻译:我们考虑了在未知环境中自主移动机器人探索的问题,同时考虑到机器人的覆盖率、地图不确定性和状态估计不确定性。本文介绍了在与成像声纳同时进行本地化和绘图(SLAM)的基础上,在封闭环境中运行的水下机器人的新探索框架。拟议系统包括路径生成、地点识别预报、信仰传播和使用虚拟地图进行公用事业评估,该虚拟地图估计了机器人工作空间中与地图细胞相关的不确定性。我们评估了模拟实验中这一框架的性能,表明我们的算法在探索期间保持高覆盖率,同时保持低绘图率和本地化错误。我们框架的实际适用性还在探索港口环境的水下遥控飞行器(ROV)上展示。