SLAMBench2: Multi-Objective Head-to-Head Benchmarking for Visual SLAM (1808.06820v1)
Abstract: SLAM is becoming a key component of robotics and augmented reality (AR) systems. While a large number of SLAM algorithms have been presented, there has been little effort to unify the interface of such algorithms, or to perform a holistic comparison of their capabilities. This is a problem since different SLAM applications can have different functional and non-functional requirements. For example, a mobile phonebased AR application has a tight energy budget, while a UAV navigation system usually requires high accuracy. SLAMBench2 is a benchmarking framework to evaluate existing and future SLAM systems, both open and close source, over an extensible list of datasets, while using a comparable and clearly specified list of performance metrics. A wide variety of existing SLAM algorithms and datasets is supported, e.g. ElasticFusion, InfiniTAM, ORB-SLAM2, OKVIS, and integrating new ones is straightforward and clearly specified by the framework. SLAMBench2 is a publicly-available software framework which represents a starting point for quantitative, comparable and validatable experimental research to investigate trade-offs across SLAM systems.
- Bruno Bodin (5 papers)
- Harry Wagstaff (2 papers)
- Sajad Saeedi (31 papers)
- Luigi Nardi (36 papers)
- Emanuele Vespa (4 papers)
- John H Mayer (1 paper)
- Andy Nisbet (7 papers)
- Steve Furber (20 papers)
- Paul H. J. Kelly (34 papers)
- Michael O'Boyle (15 papers)
- Mikel Luján (12 papers)
- Andrew J Davison (2 papers)