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
High-Degrees-of-Freedom Dynamic Neural Fields for Robot Self-Modeling and Motion Planning
Lennart Schulze, Hod Lipson
Time-Optimal Trajectory Planning in Highway Scenarios using Basis-Spline Parameterization
Philip Dorpmüller, Thomas Schmitz, Naveen Bejagam, Torsten Bertram
Roadmaps with Gaps over Controllers: Achieving Efficiency in Planning under Dynamics
Aravind Sivaramakrishnan, Sumanth Tangirala, Edgar Granados, Noah R. Carver, Kostas E. Bekris
Speech-Based Human-Exoskeleton Interaction for Lower Limb Motion Planning
Eddie Guo, Christopher Perlette, Mojtaba Sharifi, Lukas Grasse, Matthew Tata, Vivian K. Mushahwar, Mahdi Tavakoli
Incorporating Target Vehicle Trajectories Predicted by Deep Learning Into Model Predictive Controlled Vehicles
Ni Dang, Zengjie Zhang, Jizheng Liu, Marion Leibold, Martin Buss
R-LGP: A Reachability-guided Logic-geometric Programming Framework for Optimal Task and Motion Planning on Mobile Manipulators
Kim Tien Ly, Valeriy Semenov, Mattia Risiglione, Wolfgang Merkt, Ioannis Havoutis
Accelerating Motion Planning via Optimal Transport
An T. Le, Georgia Chalvatzaki, Armin Biess, Jan Peters
Overcoming the Fear of the Dark: Occlusion-Aware Model-Predictive Planning for Automated Vehicles Using Risk Fields
Chris van der Ploeg, Truls Nyberg, José Manuel Gaspar Sánchez, Emilia Silvas, Nathan van de Wouw
Perception-and-Energy-aware Motion Planning for UAV using Learning-based Model under Heteroscedastic Uncertainty
Reiya Takemura, Genya Ishigami
Efficient RRT*-based Safety-Constrained Motion Planning for Continuum Robots in Dynamic Environments
Peiyu Luo, Shilong Yao, Yiyao Yue, Jiankun Wang, Hong Yan, Max Q. -H. Meng
EDMP: Ensemble-of-costs-guided Diffusion for Motion Planning
Kallol Saha, Vishal Mandadi, Jayaram Reddy, Ajit Srikanth, Aditya Agarwal, Bipasha Sen, Arun Singh, Madhava Krishna
Integrating Visual Foundation Models for Enhanced Robot Manipulation and Motion Planning: A Layered Approach
Chen Yang, Peng Zhou, Jiaming Qi