Safe and efficient collision avoidance is essential for robots operating in dynamic and cluttered environments. We present a task-priority control framework that embeds signed distance fields (SDFs) directly into the control loop, enabling smooth and reactive avoidance of both environmental and self-collisions. Robot links are represented with Bernstein polynomial-based distance fields, which provide continuous geometry models and closed-form gradients for defining repulsive actions. These avoidance behaviors are activated seamlessly within the task hierarchy and executed in real time through a GPU-accelerated implementation. The framework is validated on fixed-base and mobile manipulators exposed to dynamic obstacles sensed with depth cameras and laser scanners. Results show consistent improvements in responsiveness, computational efficiency and motion smoothness compared to conventional optimization-based approaches, demonstrating the effectiveness of integrating SDFs into task-priority control for robust robot motion in unstructured environments.
Govoni, A., Cavuoto, M., Li, Y., Calinon, S., Palli, G. (2026). Real-time collision avoidance with robot distance fields in a task-priority framework. ROBOTICS AND AUTONOMOUS SYSTEMS, 200, 1-16 [10.1016/j.robot.2026.105394].
Real-time collision avoidance with robot distance fields in a task-priority framework
Govoni, Andrea
Primo
;Cavuoto, Michela;Calinon, Sylvain;Palli, Gianluca
2026
Abstract
Safe and efficient collision avoidance is essential for robots operating in dynamic and cluttered environments. We present a task-priority control framework that embeds signed distance fields (SDFs) directly into the control loop, enabling smooth and reactive avoidance of both environmental and self-collisions. Robot links are represented with Bernstein polynomial-based distance fields, which provide continuous geometry models and closed-form gradients for defining repulsive actions. These avoidance behaviors are activated seamlessly within the task hierarchy and executed in real time through a GPU-accelerated implementation. The framework is validated on fixed-base and mobile manipulators exposed to dynamic obstacles sensed with depth cameras and laser scanners. Results show consistent improvements in responsiveness, computational efficiency and motion smoothness compared to conventional optimization-based approaches, demonstrating the effectiveness of integrating SDFs into task-priority control for robust robot motion in unstructured environments.| File | Dimensione | Formato | |
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