Path Planning
Path planning focuses on finding optimal routes between points, avoiding obstacles, and satisfying various constraints, crucial for robotics, autonomous vehicles, and logistics. Current research emphasizes efficient algorithms like rapidly-exploring random trees (RRT) and probabilistic roadmaps (PRM), incorporating advanced techniques such as centroidal Voronoi tessellation, diffusion models, and large language models (LLMs) for improved performance and adaptability in complex, dynamic environments. These advancements are driving progress in areas like multi-robot coordination, robust navigation in uncertain conditions, and the integration of AI for more intelligent and efficient pathfinding in real-world applications.
Papers
A Study on the Use of Simulation in Synthesizing Path-Following Control Policies for Autonomous Ground Robots
Harry Zhang, Stefan Caldararu, Aaron Young, Alexis Ruiz, Huzaifa Unjhawala, Ishaan Mahajan, Sriram Ashokkumar, Nevindu Batagoda, Zhenhao Zhou, Luning Bakke, Dan Negrut
Prioritize Team Actions: Multi-Agent Temporal Logic Task Planning with Ordering Constraints
Bowen Ye, Jianing Zhao, Shaoyuan Li, Xiang Yin
Equivariant Ensembles and Regularization for Reinforcement Learning in Map-based Path Planning
Mirco Theile, Hongpeng Cao, Marco Caccamo, Alberto L. Sangiovanni-Vincentelli
Path Planning in a dynamic environment using Spherical Particle Swarm Optimization
Mohssen E. Elshaar, Mohammed R. Elbalshy, A. Hussien, Mohammed Abido
MARPF: Multi-Agent and Multi-Rack Path Finding
Hiroya Makino, Yoshihiro Ohama, Seigo Ito
On the Disentanglement of Tube Inequalities in Concentric Tube Continuum Robots
Reinhard M. Grassmann, Anastasiia Senyk, Jessica Burgner-Kahrs
Modified RRT* for Path Planning in Autonomous Driving
Sugirtha T, Pranav S, Nitin Benjamin Dasiah, Sridevi M
Decentralized Lifelong Path Planning for Multiple Ackerman Car-Like Robots
Teng Guo, Jingjin Yu
Well-Connected Set and Its Application to Multi-Robot Path Planning
Teng Guo, Jingjin Yu