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
Navigation Variable-based Multi-objective Particle Swarm Optimization for UAV Path Planning with Kinematic Constraints
Thi Thuy Ngan Duong, Duy-Nam Bui, Manh Duong Phung
TRG-planner: Traversal Risk Graph-Based Path Planning in Unstructured Environments for Safe and Efficient Navigation
Dongkyu Lee, I Made Aswin Nahrendra, Minho Oh, Byeongho Yu, Hyun Myung
Evaluating Vision-Language Models as Evaluators in Path Planning
Mohamed Aghzal, Xiang Yue, Erion Plaku, Ziyu Yao
SCoTT: Wireless-Aware Path Planning with Vision Language Models and Strategic Chains-of-Thought
Aladin Djuhera, Vlad C. Andrei, Amin Seffo, Holger Boche, Walid Saad
A Cost-Effective Approach to Smooth A* Path Planning for Autonomous Vehicles
Lukas Schichler, Karin Festl, Selim Solmaz, Daniel Watzenig