Initializing the state of a sensorized platform can be challenging, as a limited set of measurements often provide low-informative constraints that are in addition highly non-linear. This may lead to poor initial estimates that may converge to local minima during subsequent non-linear optimization. We propose an adaptive GNSS-inertial initialization strategy that delays the incorporation of global GNSS constraints until they become sufficiently informative. In the initial stage, our method leverages inter-epoch baseline vector residuals between consecutive GNSS fixes to mitigate inertial drift. To determine when to activate global constraints, we introduce a general criterion based on the evolution of the Hessian matrix's singular values, effectively quantifying system observability. Experiments on EuRoC, GVINS and MARS-LVIG datasets show that our approach consistently outperforms the naive strategy of fusing all measurements from the outset, yielding more accurate and robust initializations.
翻译:传感器化平台的状态初始化可能具有挑战性,因为有限的测量集通常提供信息量较低的约束,且这些约束高度非线性。这可能导致初始估计不佳,在后续非线性优化中收敛至局部极小值。我们提出一种自适应GNSS-惯性初始化策略,延迟引入全局GNSS约束直至其具备足够信息量。在初始阶段,该方法利用连续GNSS定位点之间的历元间基线向量残差来抑制惯性漂移。为确定何时激活全局约束,我们引入一种基于Hessian矩阵奇异值演化的通用准则,有效量化系统可观测性。在EuRoC、GVINS和MARS-LVIG数据集上的实验表明,该方法始终优于从一开始就融合所有测量的朴素策略,实现了更精确、更鲁棒的初始化。