This article presents a 3D point cloud map-merging framework for egocentric heterogeneous multi-robot exploration, based on overlap detection and alignment, that is independent of a manual initial guess or prior knowledge of the robots' poses. The novel proposed solution utilizes state-of-the-art place recognition learned descriptors, that through the framework's main pipeline, offer a fast and robust region overlap estimation, hence eliminating the need for the time-consuming global feature extraction and feature matching process that is typically used in 3D map integration. The region overlap estimation provides a homogeneous rigid transform that is applied as an initial condition in the point cloud registration algorithm Fast-GICP, which provides the final and refined alignment. The efficacy of the proposed framework is experimentally evaluated based on multiple field multi-robot exploration missions in underground environments, where both ground and aerial robots are deployed, with different sensor configurations.
翻译:本篇文章提出了一个基于重叠探测和校正的自我中心多元多机器人探索的3D点云层地图合并框架,这一框架独立于人工初步猜测或对机器人外形的先前知识。新颖的拟议解决方案使用最先进的地点识别学描述符,通过框架的主要管道,提供了快速和稳健的区域重叠估计,从而消除了在3D地图整合中通常使用的耗时的全球地物提取和地物匹配程序的需求。区域重叠估算提供了一个单一的僵硬变异,作为点云登记算法快速GICP的初始条件,提供最终和精细的校准。拟议框架的功效是实验性评估,其依据是在地表和空中机器人都部署的多个实地多机器人在地下环境中进行勘探任务,并配有不同的传感器配置。