Paper ID: 2209.00498

NODE IK: Solving Inverse Kinematics with Neural Ordinary Differential Equations for Path Planning

Suhan Park, Mathew Schwartz, Jaeheung Park

This paper proposes a novel inverse kinematics (IK) solver of articulated robotic systems for path planning. IK is a traditional but essential problem for robot manipulation. Recently, data-driven methods have been proposed to quickly solve the IK for path planning. These methods can handle a large amount of IK requests at once with the advantage of GPUs. However, the accuracy is still low, and the model requires considerable time for training. Therefore, we propose an IK solver that improves accuracy and memory efficiency by utilizing the continuous hidden dynamics of Neural ODE. The performance is compared using multiple robots.

Submitted: Sep 1, 2022