Enabling fully autonomous robots capable of navigating and exploring large-scale, unknown and complex environments has been at the core of robotics research for several decades. A key requirement in autonomous exploration is building accurate and consistent maps of the unknown environment that can be used for reliable navigation. Loop closure detection, the ability to assert that a robot has returned to a previously visited location, is crucial for consistent mapping as it reduces the drift caused by error accumulation in the estimated robot trajectory. Moreover, in multi-robot systems, loop closures enable merging local maps obtained by a team of robots into a consistent global map of the environment. In this paper, we present a degeneracy-aware and drift-resilient loop closing method to improve place recognition and resolve 3D location ambiguities for simultaneous localization and mapping (SLAM) in GPS-denied, large-scale and perceptually-degraded environments. More specifically, we focus on SLAM in subterranean environments (e.g., lava tubes, caves, and mines) that represent examples of complex and ambiguous environments where current methods have inadequate performance.
翻译:数十年来,能够导航和探索大规模、未知和复杂环境的完全自主的机械人一直是机器人研究的核心。自主勘探的一个关键要求是绘制准确和一致的、可用于可靠导航的未知环境地图。环闭探测,能够断言机器人已返回以前访问过的地点,这对于连贯的绘图至关重要,因为它减少了估计机器人轨道误差积累造成的漂移。此外,在多机器人系统中,环闭能够将一组机器人获得的本地地图合并成一致的全球环境地图。在本文件中,我们提出了一种精密度和具有漂移弹性的环圈封闭方法,以提高定位和解决在全球定位系统封闭、大规模和感官退化环境中同步定位和绘图(SLAM)的3D位置模糊性。更具体地说,我们在次地球环境中(例如熔岩管、洞穴和矿)侧重于SLAM,这代表了当前方法不完善的复杂和模糊环境的例子。