In this paper, we consider the problem of distributed pose graph optimization (PGO) that has extensive applications in multi-robot simultaneous localization and mapping (SLAM). We propose majorization minimization methods to distributed PGO and show that our proposed methods are guaranteed to converge to first-order critical points under mild conditions. Furthermore, since our proposed methods rely a proximal operator of distributed PGO, the convergence rate can be significantly accelerated with Nesterov's method, and more importantly, the acceleration induces no compromise of theoretical guarantees. In addition, we also present accelerated majorization minimization methods to the distributed chordal initialization that have a quadratic convergence, which can be used to compute an initial guess for distributed PGO. The efficacy of this work is validated through applications on a number of 2D and 3D SLAM datasets and comparisons with existing state-of-the-art methods, which indicates that our proposed methods have faster convergence and result in better solutions to distributed PGO.
翻译:在本文中,我们考虑了分布式成形图优化(PGO)问题,这一问题在多机器人同步本地化和绘图(SLAM)中具有广泛应用性。我们提议了分配式成形图优化(PGO)的主要最小化方法,以分布式成形图优化(SLAM),并表明我们提出的方法保证在温和条件下与一阶临界点汇合。此外,由于我们提出的方法依赖于分布式成形图组合的准操作者,因此,随着Nesterov方法的采用,趋同率可以大大加快,更重要的是,加速率不会导致理论保证的妥协。此外,我们还提出了加速主要化方法,以分布式成色条首字母最小化,可以用来计算分布式成对分布式成的PGO的初步猜测。这项工作的效力通过对2D和3D SLM数据集的应用以及与现有最新方法的比较得到验证,这表明我们提出的方法更快地趋同,并导致更好的分配式PGO的解决方案。