A new model predictive control framework that integrates soft constraints based on control barrier function to enable robots to navigate efficiently and safely in dynamic environments.
A memory-enabled deep reinforcement learning framework is proposed to enhance autonomous robot navigation in diverse and crowded pedestrian environments by leveraging long-term memory, modeling human-robot interactions, and integrating global planning.
A novel approach to incorporate legibility into local motion planning for mobile robots, enabling them to generate legible motions in real-time and dynamic environments.
A multi-objective reinforcement learning framework that enables robots to adapt their navigation behavior to changing user preferences without retraining, by incorporating demonstration data as a tuneable objective.
A traversability-aware navigation framework that integrates apparent traversability from exteroceptive sensors and relative traversability from proprioceptive sensors to generate an optimal path and adaptively control the robot's velocity for robust navigation in extreme mountainous terrain.
This article presents an autonomous robot navigation system that leverages an embedded control navigation map utilizing cellular automata with active cells to effectively navigate in an environment containing various types of obstacles.
Sicherstellung der sicheren Navigation von Robotern in menschengefüllten Umgebungen durch die Integration von vorhersagbaren Bewegungsunsicherheiten in ein Verteilungsrobustes risikobewusstes Regelungssystem.