The efficiency and accuracy of mapping are crucial in a large scene and long-term AR applications. Multi-agent cooperative SLAM is the precondition of multi-user AR interaction. The cooperation of multiple smart phones has the potential to improve efficiency and robustness of task completion and can complete tasks that a single agent cannot do. However, it depends on robust communication, efficient location detection, robust mapping, and efficient information sharing among agents. We propose a multi-intelligence collaborative monocular visual-inertial SLAM deployed on multiple ios mobile devices with a centralized architecture. Each agent can independently explore the environment, run a visual-inertial odometry module online, and then send all the measurement information to a central server with higher computing resources. The server manages all the information received, detects overlapping areas, merges and optimizes the map, and shares information with the agents when needed. We have verified the performance of the system in public datasets and real environments. The accuracy of mapping and fusion of the proposed system is comparable to VINS-Mono which requires higher computing resources.
翻译:绘图的效率和准确性在大型场景和长期AR应用中至关重要。 多剂合作 SLAM 是多用户AR互动的先决条件。 多智能电话的合作具有提高任务完成效率和稳健性的潜力,并能够完成单个代理无法完成的任务。然而,它取决于强有力的通信、高效的定位探测、稳健的绘图以及代理之间高效的信息共享。我们提议在一个集中结构的多个ios移动设备上部署多智能协作单视线内线性SLAM。每个代理可以独立探索环境,在网上运行一个视觉内线眼测量模块,然后将所有测量信息发送到拥有更高计算资源的中央服务器。服务器管理收到的所有信息,探测重叠区域,合并和优化地图,并在必要时与代理共享信息。我们已经核查了该系统在公共数据集和实际环境中的性能。拟议系统的测绘和聚合准确性与需要更高计算资源的VINS-Mono相似。