论文标题

在严重的探测器漂移下对大规模环境进行自动体积探索的统一方法

A Unified Approach for Autonomous Volumetric Exploration of Large Scale Environments under Severe Odometry Drift

论文作者

Schmid, Lukas, Reijgwart, Victor, Ott, Lionel, Nieto, Juan, Siegwart, Roland, Cadena, Cesar

论文摘要

探索是机器人自主权中的一个基本问题。然而,一个主要的局限性是,在探索机器人期间,通常必须仅依靠车载系统进行状态估算,从而在大型环境中累积了大量的漂移。漂移可能不利于机器人的安全性和勘探性能。在这项工作中,提出了一种基于subsap的多层方法,用于映射和计划,以便尽管有探测仪漂移,可以对大规模环境进行安全有效的体积探索。我们方法的核心思想结合了本地(时间和空间上)和全球映射,以确保安全性和效率。同样,我们的计划方法利用了所提出的地图在不断变化的全球地图中计算全球容积前沿,并利用了探索的性质,涉及部分信息以进行有效的本地和全球计划。即使在无漂移条件下,也会对提出的系统进行彻底评估,并显示出胜过最先进的方法。我们的系统称为gloca},将提供开源。

Exploration is a fundamental problem in robot autonomy. A major limitation, however, is that during exploration robots oftentimes have to rely on on-board systems alone for state estimation, accumulating significant drift over time in large environments. Drift can be detrimental to robot safety and exploration performance. In this work, a submap-based, multi-layer approach for both mapping and planning is proposed to enable safe and efficient volumetric exploration of large scale environments despite odometry drift. The central idea of our approach combines local (temporally and spatially) and global mapping to guarantee safety and efficiency. Similarly, our planning approach leverages the presented map to compute global volumetric frontiers in a changing global map and utilizes the nature of exploration dealing with partial information for efficient local and global planning. The presented system is thoroughly evaluated and shown to outperform state of the art methods even under drift-free conditions. Our system, termed GLoca}, will be made available open source.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源