Neural Motion
Neural motion planning aims to develop efficient and robust algorithms for generating robot movements, particularly in complex or dynamic environments, surpassing the limitations of traditional methods. Current research focuses on leveraging deep learning, employing architectures like graph neural networks, convolutional neural networks, and transformers to learn effective motion policies from data or physics-based models, often incorporating techniques like reinforcement learning and optimization. These advancements are crucial for enabling autonomous navigation in robotics, autonomous driving, and other applications requiring real-time, safe, and adaptable motion control.
Papers
June 13, 2022
March 7, 2022