Real Time Motion Planning
Real-time motion planning focuses on generating collision-free and efficient paths for robots and autonomous vehicles in dynamic environments, aiming to achieve fast computation speeds crucial for practical applications. Current research emphasizes integrating advanced algorithms like Model Predictive Control (MPC), Rapidly-exploring Random Trees (RRT), and graph neural networks with techniques such as reachable set analysis and hierarchical planning to handle complex scenarios involving multiple agents or obstacles. These advancements are significantly impacting fields like robotics, autonomous driving, and industrial automation by enabling safer, more efficient, and adaptable systems capable of real-time decision-making and reactive control.
Papers
Can't Touch This: Real-Time, Safe Motion Planning and Control for Manipulators Under Uncertainty
Jonathan Michaux, Patrick Holmes, Bohao Zhang, Che Chen, Baiyue Wang, Shrey Sahgal, Tiancheng Zhang, Sidhartha Dey, Shreyas Kousik, Ram Vasudevan
RRT Guided Model Predictive Path Integral Method
Chuyuan Tao, Hunmin Kim, Naira Hovakimyan