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SLAMBench2: Multi-Objective Head-to-Head Benchmarking for Visual SLAM

Bruno Bodin, Harry Wagstaff, Sajad Saeedi, Luigi Nardi, Emanuele Vespa, John H. Mayer, Andy Nisbet, Mikel Luján, Steve Furber, Andrew J. Davison, Paul H. J. Kelly, Michael O’Boyle

Year
2018
Citations
16
Access
Open access

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.

Keywords

BenchmarkingComputer scienceSimultaneous localization and mappingRoboticsComponent (thermodynamics)Orb (optics)Artificial intelligenceInterface (matter)RobotMobile robot

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