Informed Circular Fields: A Global Reactive Obstacle Avoidance Framework for Robotic Manipulator

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  • Technical University of Munich (TUM)
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Original languageEnglish
Article number1447351
JournalFrontiers in Robotics and AI
Volume11
Publication statusPublished - 3 Jan 2025

Abstract

In this paper, we present a global reactive motion planning framework designed for robotic manipulators navigating in complex dynamic environments. Utilizing local minima-free circular fields, our methodology generates reactive control commands while also leveraging global environmental information from arbitrary configuration space motion planners to identify promising trajectories around obstacles. Furthermore, we extend the virtual agents framework introduced in Becker et al. (2021) to incorporate this global information, simulating multiple robot trajectories with varying parameter sets to enhance avoidance strategies. Consequently, the proposed unified robotic motion planning framework seamlessly combines global trajectory planning with local reactive control and ensures comprehensive obstacle avoidance for the entire body of a robotic manipulator. The efficacy of the proposed approach is demonstrated through rigorous testing in over 4,000 simulation scenarios, where it consistently outperforms existing motion planners. Additionally, we validate our framework’s performance in real-world experiments using a collaborative Franka Emika robot with vision feedback. Our experiments illustrate the robot’s ability to promptly adapt its motion plan and effectively avoid unpredictable movements by humans within its workspace. Overall, our contributions offer a robust and versatile solution for global reactive motion planning in dynamic environments.

Keywords

    Autonomous Robotic Systems, Guidance navigation and control, Real-Time Collision Avoidance, Motion Planning, robotic manipulation arm

Cite this

Informed Circular Fields: A Global Reactive Obstacle Avoidance Framework for Robotic Manipulator. / Becker, Marvin; Caspers, Philipp; Lilge, Torsten et al.
In: Frontiers in Robotics and AI, Vol. 11, 1447351, 03.01.2025.

Research output: Contribution to journalArticleResearchpeer review

Becker M, Caspers P, Lilge T, Haddadin S, Müller MA. Informed Circular Fields: A Global Reactive Obstacle Avoidance Framework for Robotic Manipulator. Frontiers in Robotics and AI. 2025 Jan 3;11:1447351. doi: 10.3389/frobt.2024.1447351
Becker, Marvin ; Caspers, Philipp ; Lilge, Torsten et al. / Informed Circular Fields : A Global Reactive Obstacle Avoidance Framework for Robotic Manipulator. In: Frontiers in Robotics and AI. 2025 ; Vol. 11.
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title = "Informed Circular Fields: A Global Reactive Obstacle Avoidance Framework for Robotic Manipulator",
abstract = "In this paper, we present a global reactive motion planning framework designed for robotic manipulators navigating in complex dynamic environments. Utilizing local minima-free circular fields, our methodology generates reactive control commands while also leveraging global environmental information from arbitrary configuration space motion planners to identify promising trajectories around obstacles. Furthermore, we extend the virtual agents framework introduced in Becker et al. (2021) to incorporate this global information, simulating multiple robot trajectories with varying parameter sets to enhance avoidance strategies. Consequently, the proposed unified robotic motion planning framework seamlessly combines global trajectory planning with local reactive control and ensures comprehensive obstacle avoidance for the entire body of a robotic manipulator. The efficacy of the proposed approach is demonstrated through rigorous testing in over 4,000 simulation scenarios, where it consistently outperforms existing motion planners. Additionally, we validate our framework{\textquoteright}s performance in real-world experiments using a collaborative Franka Emika robot with vision feedback. Our experiments illustrate the robot{\textquoteright}s ability to promptly adapt its motion plan and effectively avoid unpredictable movements by humans within its workspace. Overall, our contributions offer a robust and versatile solution for global reactive motion planning in dynamic environments.",
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Download

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T2 - A Global Reactive Obstacle Avoidance Framework for Robotic Manipulator

AU - Becker, Marvin

AU - Caspers, Philipp

AU - Lilge, Torsten

AU - Haddadin, Sami

AU - Müller, Matthias A.

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PY - 2025/1/3

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N2 - In this paper, we present a global reactive motion planning framework designed for robotic manipulators navigating in complex dynamic environments. Utilizing local minima-free circular fields, our methodology generates reactive control commands while also leveraging global environmental information from arbitrary configuration space motion planners to identify promising trajectories around obstacles. Furthermore, we extend the virtual agents framework introduced in Becker et al. (2021) to incorporate this global information, simulating multiple robot trajectories with varying parameter sets to enhance avoidance strategies. Consequently, the proposed unified robotic motion planning framework seamlessly combines global trajectory planning with local reactive control and ensures comprehensive obstacle avoidance for the entire body of a robotic manipulator. The efficacy of the proposed approach is demonstrated through rigorous testing in over 4,000 simulation scenarios, where it consistently outperforms existing motion planners. Additionally, we validate our framework’s performance in real-world experiments using a collaborative Franka Emika robot with vision feedback. Our experiments illustrate the robot’s ability to promptly adapt its motion plan and effectively avoid unpredictable movements by humans within its workspace. Overall, our contributions offer a robust and versatile solution for global reactive motion planning in dynamic environments.

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