Data-Driven Motion Planning: A Survey on Deep Neural Networks, Reinforcement Learning, and Large Language Model Approaches
Gabriela Letícia Ramos Carvalho, Tetsuya Sawanobori, Takato Horii
- Year
- 2025
- Citations
- 6
Abstract
Motion planning is a fundamental challenge in robotics, involving the creation of trajectories from start to goal states while meeting constraints like collision avoidance and joint limits. Its complexity increases with the number of robot joints. Several traditional approaches tackle this problem, such as sampling motion planning, grid-based methods, potential fields, and optimization techniques. Recent advancements in deep neural networks, reinforcement learning, and large language models enable new possibilities for solving motion planning problems by improving sampling efficiency, optimizing control policies, and enabling task planning through natural language prompts. This survey comprehensively reviews these novel approaches, providing background knowledge, analyzing key contributions, and identifying common patterns, limitations, and research gaps. Our work is the first to integrate all three major data-driven approaches, discussing their applications and future research directions.
Keywords
Related papers
Statistical Learning Theory
Yuhai Wu, Vladimir Vapnik
1999
Artificial intelligence: a modern approach
1995
Applied Nonlinear Control
Jean-Jacques Slotine, Weiping Li
1991
A new optimizer using particle swarm theory
R.C. Eberhart, James Kennedy
2002