ROLGMay 27

SPRINT: Efficient Spectral Priors for Humanoid Athletic Sprints

arXiv:2605.2854950.2
Predicted impact top 45% in RO · last 90 daysOriginality Highly original
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This work addresses the lack of kinematic reference data and stability issues in humanoid sprinting, enabling high-speed athletic locomotion with minimal data.

SPRINT introduces frequency-adaptive spectral priors for humanoid sprinting, achieving zero-shot sim-to-real transfer on the Unitree G1 platform with a peak velocity of 6 m/s and seamless gait transitions.

The pursuit of humanoid athletic sprints is hindered by a scarcity of humanoid-viable kinematic reference data and the inability of existing frameworks to maintain stability during sprints. To overcome these limitations, we introduce SPRINT, a novel framework driven by efficient, frequency-adaptive spectral priors. By characterizing the fundamental periodicity of human locomotion in the frequency domain using a reference library of five discrete motion sequences, these priors generate kinematically feasible joint trajectories across a broad velocity spectrum, successfully extrapolating to speeds that exceed the reference distribution. Guided by these pretrained priors, the SPRINT policy achieves zero-shot sim-to-real transfer in field experiments on the Unitree G1 platform, reaching a peak sprinting velocity of 6 m/s and demonstrating seamless gait transitions while preserving biomimetic naturalness. Ultimately, this work establishes frequency-adaptive spectral priors as a highly data-efficient foundation for humanoid athletic sprints. The project page is available at https://anonymous.4open.science/w/SPRINT-138A/.

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