Proactive Local-Minima-Free Robot Navigation: Blending Motion Prediction with Safe Control
Journal article, 2026

This work addresses the challenge of safe and efficient mobile robot navigation in complex dynamic environments with concave moving obstacles. Reactive safe controllers like Control Barrier Functions (CBFs) design obstacle avoidance strategies based only on the current states of the obstacles, risking future collisions. To alleviate this problem, we use Gaussian processes to learn barrier functions online from multimodal motion predictions of obstacles generated by neural networks trained with energy-based learning. The learned barrier functions are then fed into quadratic programs using modulated CBFs (MCBFs), a local-minimum-free version of CBFs, to achieve safe and efficient navigation. The proposed framework makes two key contributions. First, it develops a prediction-to-barrier function online learning pipeline. Second, it introduces an autonomous parameter tuning algorithm that adapts MCBFs to deforming, prediction-based barrier functions. The framework is evaluated in both simulations and real-world experiments, consistently outperforming baselines and demonstrating superior safety and efficiency in crowded dynamic environments.

Collision avoidance

machine learning for robot control

human-aware motion planning

Author

Yifan Xue

University of Pennsylvania

Ze Zhang

University of Gothenburg

Chalmers, Computer Science and Engineering (Chalmers), Computer and Network Systems

Knut Åkesson

Chalmers, Electrical Engineering, Systems and control

Nadia Figueroa

University of Pennsylvania

IEEE Robotics and Automation Letters

23773766 (eISSN)

Vol. 11 4 5096-5103

Subject Categories (SSIF 2025)

Robotics and automation

Control Engineering

DOI

10.1109/LRA.2026.3668447

More information

Latest update

5/20/2026