论文标题
LAMP 2.0:强大的多机器人大满贯系统,用于在挑战大规模地下环境中运行
LAMP 2.0: A Robust Multi-Robot SLAM System for Operation in Challenging Large-Scale Underground Environments
论文作者
论文摘要
在未知和大规模的地下环境中与一组异质移动机器人团队进行搜索和救援,需要高精度的本地化和映射。在复杂且感知上衰落的地下环境中,这一至关重要的要求面临许多挑战,因为船上感知系统需要在非官方条件下运作(由于黑暗和尘土而造成的可见性,崎and的地形且泥泞的地形较差,并且存在自相似和歧义场景)。在灾难响应方案和缺乏有关环境的先前信息的情况下,机器人必须依靠嘈杂的传感器数据并执行同时定位和映射(SLAM)来构建环境的3D地图,并定位自己和潜在的幸存者。为此,本文报告了Team Costar在DARPA Subterranean Challenge的背景下开发的多机器人大满贯系统。 We extend our previous work, LAMP, by incorporating a single-robot front-end interface that is adaptable to different odometry sources and lidar configurations, a scalable multi-robot front-end to support inter- and intra-robot loop closure detection for large scale environments and multi-robot teams, and a robust back-end equipped with an outlier-resilient pose graph optimization based on Graduated Non-Convexity.我们提供了有关多机器人前端和后端的详细消融研究,并评估美国跨矿山,发电厂和洞穴收集的挑战现实世界数据集的整体系统性能。我们还发布了多机枪后端数据集(以及相应的地面真相),该数据集可以作为大型地下大满贯的具有挑战性的基准。
Search and rescue with a team of heterogeneous mobile robots in unknown and large-scale underground environments requires high-precision localization and mapping. This crucial requirement is faced with many challenges in complex and perceptually-degraded subterranean environments, as the onboard perception system is required to operate in off-nominal conditions (poor visibility due to darkness and dust, rugged and muddy terrain, and the presence of self-similar and ambiguous scenes). In a disaster response scenario and in the absence of prior information about the environment, robots must rely on noisy sensor data and perform Simultaneous Localization and Mapping (SLAM) to build a 3D map of the environment and localize themselves and potential survivors. To that end, this paper reports on a multi-robot SLAM system developed by team CoSTAR in the context of the DARPA Subterranean Challenge. We extend our previous work, LAMP, by incorporating a single-robot front-end interface that is adaptable to different odometry sources and lidar configurations, a scalable multi-robot front-end to support inter- and intra-robot loop closure detection for large scale environments and multi-robot teams, and a robust back-end equipped with an outlier-resilient pose graph optimization based on Graduated Non-Convexity. We provide a detailed ablation study on the multi-robot front-end and back-end, and assess the overall system performance in challenging real-world datasets collected across mines, power plants, and caves in the United States. We also release our multi-robot back-end datasets (and the corresponding ground truth), which can serve as challenging benchmarks for large-scale underground SLAM.