IKDiffuser: Fast and Diverse Inverse Kinematics Solution Generation for Multi-arm Robotic Systems
Journal:
arXiv
Published Date:
Jun 16, 2025
Abstract
Solving Inverse Kinematics (IK) problems is fundamental to robotics, but has
primarily been successful with single serial manipulators. For multi-arm
robotic systems, IK remains challenging due to complex self-collisions, coupled
joints, and high-dimensional redundancy. These complexities make traditional IK
solvers slow, prone to failure, and lacking in solution diversity. In this
paper, we present IKDiffuser, a diffusion-based model designed for fast and
diverse IK solution generation for multi-arm robotic systems. IKDiffuser learns
the joint distribution over the configuration space, capturing complex
dependencies and enabling seamless generalization to multi-arm robotic systems
of different structures. In addition, IKDiffuser can incorporate additional
objectives during inference without retraining, offering versatility and
adaptability for task-specific requirements. In experiments on 6 different
multi-arm systems, the proposed IKDiffuser achieves superior solution accuracy,
precision, diversity, and computational efficiency compared to existing
solvers. The proposed IKDiffuser framework offers a scalable, unified approach
to solving multi-arm IK problems, facilitating the potential of multi-arm
robotic systems in real-time manipulation tasks.