Robotic applications are continuously striving towards higher levels of autonomy. To achieve that goal, a highly robust and accurate state estimation is indispensable. Combining visual and inertial sensor modalities has proven to yield accurate and locally consistent results in short-term applications. Unfortunately, visual-inertial state estimators suffer from the accumulation of drift for long-term trajectories. To eliminate this drift, global measurements can be fused into the state estimation pipeline. The most known and widely available source of global measurements is the Global Positioning System (GPS). In this paper, we propose a novel approach that fully combines stereo Visual-Inertial Simultaneous Localisation and Mapping (SLAM), including visual loop closures, with the fusion of global sensor modalities in a tightly-coupled and optimisation-based framework. Incorporating measurement uncertainties, we provide a robust criterion to solve the global reference frame initialisation problem. Furthermore, we propose a loop-closure-like optimisation scheme to compensate drift accumulated during outages in receiving GPS signals. Experimental validation on datasets and in a real-world experiment demonstrates the robustness of our approach to GPS dropouts as well as its capability to estimate highly accurate and globally consistent trajectories compared to existing state-of-the-art methods.
翻译:为了实现这一目标,必须有一个高度稳健和准确的状态估计。将视觉和惯性传感器模式结合起来,可以在短期内产生准确和一致的结果。不幸的是,视觉-神经状态估计器会因长期轨迹的漂移而不断积累。为了消除这种漂移,全球测量可并入国家估算管道。全球测量的最已知和最广泛可得的来源是全球定位系统(GPS)。在本文中,我们提出一种新颖的办法,将立体视觉-内性同步定位和绘图(SLAM)充分结合,包括视觉环圈封闭,以及全球传感器模式结合在一个紧密结合和以优化为基础的框架中。纳入测量不确定性,我们提供一个强有力的标准来解决全球参考框架初始化问题。此外,我们提议一种环闭式优化计划,以补偿在接收全球定位系统信号时累积的流流流。对数据集的实验和真实世界实验,包括视觉环绕式关闭,以及将全球传感器模式结合成一个紧密结合的环绕式连接和优化的框架。我们对全球全球定位系统现有精确性估算方法的一贯性,以全球精确性方法对全球定位系统的精确性进行了对比。