Motion Planning
Motion planning focuses on generating safe and efficient trajectories for robots and autonomous systems to navigate complex environments and achieve specified goals. Current research emphasizes improving the efficiency of sampling-based methods through techniques like message-passing Monte Carlo and leveraging vision-language models and reinforcement learning for higher-level task planning and decision-making in dynamic scenarios. These advancements are crucial for enabling robots to perform increasingly complex tasks in real-world settings, impacting fields such as robotics, autonomous driving, and multi-agent systems.
Papers
PAAMP: Polytopic Action-Set And Motion Planning for Long Horizon Dynamic Motion Planning via Mixed Integer Linear Programming
Akshay Jaitly, Siavash Farzan
Diffusion-Reinforcement Learning Hierarchical Motion Planning in Adversarial Multi-agent Games
Zixuan Wu, Sean Ye, Manisha Natarajan, Matthew C. Gombolay
Partially Observable Task and Motion Planning with Uncertainty and Risk Awareness
Aidan Curtis, George Matheos, Nishad Gothoskar, Vikash Mansinghka, Joshua Tenenbaum, Tomás Lozano-Pérez, Leslie Pack Kaelbling
H-MaP: An Iterative and Hybrid Sequential Manipulation Planner
Berk Cicek, Cankut Bora Tuncer, Busenaz Kerimgil, Ozgur S. Oguz
Interactive Distance Field Mapping and Planning to Enable Human-Robot Collaboration
Usama Ali, Lan Wu, Adrian Mueller, Fouad Sukkar, Tobias Kaupp, Teresa Vidal-Calleja
Safe Planning for Articulated Robots Using Reachability-based Obstacle Avoidance With Spheres
Jonathan Michaux, Adam Li, Qingyi Chen, Che Chen, Bohao Zhang, Ram Vasudevan
Ant Colony Optimization for Cooperative Inspection Path Planning Using Multiple Unmanned Aerial Vehicles
Duy Nam Bui, Thuy Ngan Duong, Manh Duong Phung