SPARK: Skeleton-Parameter Aligned Retargeting on Humanoid Robots with Kinodynamic Trajectory Optimization
Mar 5, 2026·,,
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0 min read
Hanwen Wang
Qiayuan Liao
Bike Zhang
Kunzhao Ren
Koushil Sreenath
Xiaobin Xiong
Abstract
Human motion provides rich priors for training general-purpose humanoid control policies, but raw demonstrations are often incompatible with a robot’s kinematics and dynamics, limiting their direct use. We present a two-stage pipeline for generating natural and dynamically feasible motion references from task-space human data. First, we convert human motion into a unified robot description format (URDF)-based skeleton representation and calibrate it to the target humanoid’s dimensions. By aligning the underlying skeleton structure rather than heuristically modifying task-space targets, this step significantly reduces inverse kinematics error and tuning effort. Second, we refine the retargeted trajectories through progressive kinodynamic trajectory optimization (TO), solved in three stages: kinematic TO, inverse dynamics, and full kinodynamic TO, each warm-started from the previous solution. The final result yields dynamically consistent state trajectories and joint torque profiles, providing high-quality references for learning-based controllers. Together, skeleton calibration and kinodynamic TO enable the generation of natural, physically consistent motion references across diverse humanoid platforms.
Type
Publication
Submitted to IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS)
Multi-Contact Whole-Body Motion Planning and Control
Human and Humanoid Motion Analysis and Synthesis
Humanoid and Bipedal Locomotion

Authors
Kunzhao Ren
(he/him)
PhD Student
Hi, I am Kunzhao Ren, a first-year PhD student in Mechanical Engineering at the University of Wisconsin–Madison, with interests in legged robotics.