Article ID Journal Published Year Pages File Type
411389 Robotics and Autonomous Systems 2013 15 Pages PDF
Abstract

This paper describes a system for performing real-time multi-session visual mapping in large-scale environments. Multi-session mapping considers the problem of combining the results of multiple simultaneous localisation and mapping (SLAM) missions performed repeatedly over time in the same environment. The goal is to robustly combine multiple maps in a common metrical coordinate system, with consistent estimates of uncertainty. Our work employs incremental smoothing and mapping (iSAM) as the underlying SLAM state estimator and uses an improved appearance-based method for detecting loop closures within single mapping sessions and across multiple sessions. To stitch together pose graph maps from multiple visual mapping sessions, we employ spatial separator variables, called anchor nodes, to link together multiple relative pose graphs.The system architecture consists of a separate front-end for computing visual odometry and windowed bundle adjustment on individual sessions, in conjunction with a back-end for performing the place recognition and multi-session mapping. We provide experimental results for real-time multi-session visual mapping on wheeled and handheld datasets in the MIT Stata Center. These results demonstrate key capabilities that will serve as a foundation for future work in large-scale persistent visual mapping.

► Provides solution to the problem of large-scale persistent mapping and localisation. ► Principled approach to multi-session mapping using iSAM with anchor nodes. ► Exponential map used to deal with over-parameterisation of rotations and homogeneous points. ► Place recognition based on CRF-matching incorporating 3D and appearance information.

Related Topics
Physical Sciences and Engineering Computer Science Artificial Intelligence
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