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Theoretical computer science / Probabilistic roadmap / Unmanned aerial vehicle / Physics / Holonomic / Flight controller / Mathematics / Robot control / Motion planning
Date: 2012-02-01 08:45:11
Theoretical computer science
Probabilistic roadmap
Unmanned aerial vehicle
Physics
Holonomic
Flight controller
Mathematics
Robot control
Motion planning

1 Probabilistic Roadmap Based Path Planning for an Autonomous Unmanned Helicopter Per Olof Pettersson and Patrick Doherty Link¨oping University

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