Quantifying uncertainty is a key stage in active simultaneous localization and mapping (SLAM), as it allows to identify the most informative actions to execute. However, dealing with full covariance or even Fisher information matrices (FIMs) is computationally heavy and easily becomes intractable for online systems. In this work, we study the paradigm of active graph-SLAM formulated over \textit{SE(n)}, and propose a general relationship between the FIM of the system and the Laplacian matrix of the underlying pose-graph. This link makes possible to use graph connectivity indices as utility functions with optimality guarantees, since they approximate the well-known optimality criteria that stem from optimal design theory. Experimental validation demonstrates that the proposed method leads to equivalent decisions for active SLAM in a fraction of the time.
翻译:量化不确定性是同时积极定位和绘图(SLAM)的关键阶段,因为它能够确定需要执行的最为信息化的行动。然而,处理完全共变甚或甚至渔业信息矩阵(FIMS)在计算上是沉重的,很容易成为在线系统难以操作的。在这项工作中,我们研究了用\ textit{SE(n)}来开发的活性图形-SLAM模式,并提出了系统FIM与基础布局的Laplacian矩阵之间的一般关系。这一链接使得有可能使用图形连接指数作为实用功能,并有最佳性保证,因为它们接近了最佳设计理论所产生的众所周知的最佳性标准。实验性验证表明,拟议的方法会在很短的时间内导致对活跃的SLMM作出同等的决定。