SpeedAug: Policy Acceleration via Tempo-Enriched Policy and RL Fine-Tuning 文章

ArXiv CS.AI2026-06-02NEWSen作者: Taewook Nam, Junmo Cho, Youngsoo Jang, Sung Ju Hwang

摘要

arXiv:2512.00062v2 Announce Type: replace-cross Abstract: Robotic policy learning for complex real-world manipulation tasks has seen rapid recent progress, enabled in large part by the ability to collect demonstrations through human operation. However, policies trained from such demonstrations often execute tasks far more slowly than the robot's physical capabilities, as demonstration data is collected under practical constraints that favor conservative, success-oriented trajectories over execution speed. Existing policy acceleration methods determine execution tempo through data preprocessing or heuristic rules, rather than learning execution speed optimized for the task. In this paper, we propose SpeedAug, a policy acceleration framework that enables policies to learn task-optimal execution tempo via reinforcement learning (RL). SpeedAug first learns a tempo-enriched prior policy from speed-augmented demonstrations that captures diverse execution tempos.

相关公司

暂无数据

相关人物

暂无数据