论文标题
旋转平均频谱初始化的性能保证
Performance Guarantees for Spectral Initialization in Rotation Averaging and Pose-Graph SLAM
论文作者
论文摘要
在这项工作中,我们介绍了配备明确性能的第一个初始化方法,保证了适合于同时定位和映射(SLAM)和旋转平均(RA)问题(RA)问题的第一个初始化方法。猛击和旋转平均通常被形式化为大规模的非凸点估计问题,许多不良的局部最小值可能会捕获通常应用的平滑优化方法来解决它们。因此,标准SLAM和RA算法的性能至关重要地取决于用于初始化此本地搜索的估计值的质量。尽管文献中已经出现了许多针对SLAM和RA的初始化方法,但通常将其作为纯粹的启发式近似值获得,因此很难确定(或在什么情况下)可以可靠地部署这些技术。相反,在这项工作中,我们通过光谱弛豫的镜头研究了初始化问题。具体而言,我们得出了大满贯和RA的简单光谱松弛,其形式使我们能够利用经典的线性线性地球技术(特征向量扰动范围)来控制从光谱估计到(未知)基地的距离估计的距离,以及估计问题的全球最小化问题,即测量噪声的估计问题。我们的结果揭示了测量网络的光谱图理论特性在控制估计准确性中发挥的关键作用。此外,作为我们分析的副产品,我们在SLAM和RA中最大似然估计器的估计误差获得了新的界限,这可能是独立的。最后,我们在实验上表明,与现有最新技术相比,我们的光谱估计器在实践中非常有效,在计算成本下产生可比或较高质量的初始化。
In this work we present the first initialization methods equipped with explicit performance guarantees adapted to the pose-graph simultaneous localization and mapping (SLAM) and rotation averaging (RA) problems. SLAM and rotation averaging are typically formalized as large-scale nonconvex point estimation problems, with many bad local minima that can entrap the smooth optimization methods typically applied to solve them; the performance of standard SLAM and RA algorithms thus crucially depends upon the quality of the estimates used to initialize this local search. While many initialization methods for SLAM and RA have appeared in the literature, these are typically obtained as purely heuristic approximations, making it difficult to determine whether (or under what circumstances) these techniques can be reliably deployed. In contrast, in this work we study the problem of initialization through the lens of spectral relaxation. Specifically, we derive a simple spectral relaxation of SLAM and RA, the form of which enables us to exploit classical linear-algebraic techniques (eigenvector perturbation bounds) to control the distance from our spectral estimate to both the (unknown) ground-truth and the global minimizer of the estimation problem as a function of measurement noise. Our results reveal the critical role that spectral graph-theoretic properties of the measurement network play in controlling estimation accuracy; moreover, as a by-product of our analysis we obtain new bounds on the estimation error for the maximum likelihood estimators in SLAM and RA, which are likely to be of independent interest. Finally, we show experimentally that our spectral estimator is very effective in practice, producing initializations of comparable or superior quality at lower computational cost compared to existing state-of-the-art techniques.