论文标题
基于里程碑的SLAM的有效的全球最佳证书
An Efficient Global Optimality Certificate for Landmark-Based SLAM
论文作者
论文摘要
现代状态估计通常被表达为优化问题,并使用有效的本地搜索方法解决。这些方法最能保证与本地最小值的融合,但在某些情况下,全球最优性也可以得到认证。尽管对于3D \ textit {pose-graph Optimization}的全球最优证书已经确定了很好的确定,但对于基于3D地标的SLAM问题,尚未确定细节,其中估计的状态包括机器人姿势和地图地标。在本文中,我们通过使用图形理论方法来解决这一差距,将基于里程碑的SLAM的子问题投入到一种形式,该形式产生了足够的全球最优状况。存在计算这些子问题的最佳证书的有效方法,但首先需要构建大型数据矩阵。我们表明,该矩阵可以以复杂性构造,该矩阵在地标数量中保持线性,并且不超过一个局部求解器的最新计算复杂性。我们证明了证书对基于模拟和现实世界标志的大满贯问题的功效。我们还将方法集成到最先进的SE-SYNC管道中,以有效地将基于具有里程碑意义的SLAM问题用于全球最优性。最后,考虑到基础测量图的效果,我们研究了全球最佳证书对测量噪声的鲁棒性。
Modern state estimation is often formulated as an optimization problem and solved using efficient local search methods. These methods at best guarantee convergence to local minima, but, in some cases, global optimality can also be certified. Although such global optimality certificates have been well established for 3D \textit{pose-graph optimization}, the details have yet to be worked out for the 3D landmark-based SLAM problem, in which estimated states include both robot poses and map landmarks. In this paper, we address this gap by using a graph-theoretic approach to cast the subproblems of landmark-based SLAM into a form that yields a sufficient condition for global optimality. Efficient methods of computing the optimality certificates for these subproblems exist, but first require the construction of a large data matrix. We show that this matrix can be constructed with complexity that remains linear in the number of landmarks and does not exceed the state-of-the-art computational complexity of one local solver iteration. We demonstrate the efficacy of the certificate on simulated and real-world landmark-based SLAM problems. We also integrate our method into the state-of-the-art SE-Sync pipeline to efficiently solve landmark-based SLAM problems to global optimality. Finally, we study the robustness of the global optimality certificate to measurement noise, taking into consideration the effect of the underlying measurement graph.