Litcius/Paper detail

Bench-MR: A Motion Planning Benchmark for Wheeled Mobile Robots

Eric Heiden, Luigi Palmieri, Leonard Bruns, Kai O. Arras, Gaurav S. Sukhatme, Sven Koenig

2021IEEE Robotics and Automation Letters54 citationsDOI

Abstract

Planning smooth and energy-efficient paths for wheeled mobile robots is a central task for applications ranging from autonomous driving to service and intralogistic robotics. Over the past decades, several sampling-based motion-planning algorithms, extend functions and post-smoothing algorithms have been introduced for such motion-planning systems. Choosing the best combination of components for an application is a tedious exercise, even for expert users. We therefore present Bench-MR, the first open-source motion-planning benchmarking framework designed for sampling-based motion planning for nonholonomic, wheeled mobile robots. Unlike related software suites, Bench-MR is an easy-to-use and comprehensive benchmarking framework that provides a large variety of sampling-based motion-planning algorithms, extend functions, collision checkers, post-smoothing algorithms and optimization criteria. It aids practitioners and researchers in designing, testing, and evaluating motion-planning systems, and comparing them against the state of the art on complex navigation scenarios through many performance metrics. Through several experiments, we demonstrate how Bench-MR can be used to gain extensive insights from the benchmarking results it generates.

Topics & Concepts

Motion planningBenchmarkingBenchmark (surveying)Computer scienceSmoothingMobile robotRoboticsArtificial intelligenceRobotCorrectnessMotion (physics)Probabilistic roadmapReal-time computingMachine learningComputer visionAlgorithmGeodesyBusinessGeographyMarketingRobotic Path Planning AlgorithmsSoftware Testing and Debugging TechniquesAutonomous Vehicle Technology and Safety