Trajectory Optimization
Trajectory optimization focuses on finding the best possible path for a system, whether a robot, vehicle, or even a simulated process like image restoration, by minimizing a cost function subject to constraints. Current research emphasizes integrating advanced models like diffusion models and neural networks with classical optimization techniques, often employing methods such as Model Predictive Control (MPC), A* search, and various gradient-based approaches to handle complex dynamics and constraints. This field is crucial for advancing robotics, autonomous systems, and other areas requiring efficient and safe path planning, with applications ranging from autonomous driving and manipulation to manufacturing and space exploration.
Papers
BaB-ND: Long-Horizon Motion Planning with Branch-and-Bound and Neural Dynamics
Keyi Shen, Jiangwei Yu, Huan Zhang, Yunzhu Li
MMD-OPT : Maximum Mean Discrepancy Based Sample Efficient Collision Risk Minimization for Autonomous Driving
Basant Sharma, Arun Kumar Singh
EMATO: Energy-Model-Aware Trajectory Optimization for Autonomous Driving
Zhaofeng Tian, Lichen Xia, Weisong Shi
Generalizable Spacecraft Trajectory Generation via Multimodal Learning with Transformers
Davide Celestini, Amirhossein Afsharrad, Daniele Gammelli, Tommaso Guffanti, Gioele Zardini, Sanjay Lall, Elisa Capello, Simone D'Amico, Marco Pavone
M2Diffuser: Diffusion-based Trajectory Optimization for Mobile Manipulation in 3D Scenes
Sixu Yan, Zeyu Zhang, Muzhi Han, Zaijin Wang, Qi Xie, Zhitian Li, Zhehan Li, Hangxin Liu, Xinggang Wang, Song-Chun Zhu