Author:
Swaminathan Chittaranjan Srinivas,Kucner Tomasz Piotr,Magnusson Martin,Palmieri Luigi,Molina Sergi,Mannucci Anna,Pecora Federico,Lilienthal Achim J.
Abstract
Robots operating with humans in highly dynamic environments need not onlyreactto moving persons and objects but also toanticipate and adhere topatterns of motion of dynamic agents in their environment. Currently, robotic systems use information about dynamics locally, through tracking and predicting motion within their direct perceptual range. This limits robots to reactive response to observed motion and to short-term predictions in their immediate vicinity. In this paper, we explore howmaps of dynamics(MoDs) that provide information about motion patterns outside of the direct perceptual range of the robot can be used in motion planning to improve the behaviour of a robot in a dynamic environment. We formulate cost functions for four MoD representations to be used in any optimizing motion planning framework. Further, to evaluate the performance gain through using MoDs in motion planning, we design objective metrics, and we introduce a simulation framework for rapid benchmarking. We find that planners that utilize MoDs waste less time waiting for pedestrians, compared to planners that use geometric information alone. In particular, planners utilizing both intensity (proportion of observations at a grid cell where a dynamic entity was detected) and direction information have better task execution efficiency.
Funder
Horizon 2020 Framework Programme
Subject
Artificial Intelligence,Computer Science Applications
Reference45 articles.
1. Fast, continuous state path smoothing to improve navigation accuracy;Andreasson,2015
2. Probabilistically safe motion planning to avoid dynamic obstacles with uncertain motion patterns;Aoude;Auton. Rob.,2013
3. Learning motion patterns of people for compliant robot motion;Bennewitz;Int. J. Rob. Res.,2005
4. Learning motion patterns of persons for mobile service robots;Bennewitz,2002
5. Person tracking in large public spaces using 3-d range sensors;Brščić;IEEE Trans. Hum. Mach. Syst.,2013
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