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Main Authors: Ye, Xi, Yang, Rui Heng, Jin, Jun, Li, Yinchuan, Rasouli, Amir
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2503.04051
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author Ye, Xi
Yang, Rui Heng
Jin, Jun
Li, Yinchuan
Rasouli, Amir
author_facet Ye, Xi
Yang, Rui Heng
Jin, Jun
Li, Yinchuan
Rasouli, Amir
contents Diffusion models exhibit impressive scalability in robotic task learning, yet they struggle to adapt to novel, highly dynamic environments. This limitation primarily stems from their constrained replanning ability: they either operate at a low frequency due to a time-consuming iterative sampling process, or are unable to adapt to unforeseen feedback in case of rapid replanning. To address these challenges, we propose RA-DP, a novel diffusion policy framework with training-free high-frequency replanning ability that solves the above limitations in adapting to unforeseen dynamic environments. Specifically, our method integrates guidance signals which are often easily obtained in the new environment during the diffusion sampling process, and utilizes a novel action queue mechanism to generate replanned actions at every denoising step without retraining, thus forming a complete training-free framework for robot motion adaptation in unseen environments. Extensive evaluations have been conducted in both well-recognized simulation benchmarks and real robot tasks. Results show that RA-DP outperforms the state-of-the-art diffusion-based methods in terms of replanning frequency and success rate. Moreover, we show that our framework is theoretically compatible with any training-free guidance signal.
format Preprint
id arxiv_https___arxiv_org_abs_2503_04051
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle RA-DP: Rapid Adaptive Diffusion Policy for Training-Free High-frequency Robotics Replanning
Ye, Xi
Yang, Rui Heng
Jin, Jun
Li, Yinchuan
Rasouli, Amir
Robotics
Diffusion models exhibit impressive scalability in robotic task learning, yet they struggle to adapt to novel, highly dynamic environments. This limitation primarily stems from their constrained replanning ability: they either operate at a low frequency due to a time-consuming iterative sampling process, or are unable to adapt to unforeseen feedback in case of rapid replanning. To address these challenges, we propose RA-DP, a novel diffusion policy framework with training-free high-frequency replanning ability that solves the above limitations in adapting to unforeseen dynamic environments. Specifically, our method integrates guidance signals which are often easily obtained in the new environment during the diffusion sampling process, and utilizes a novel action queue mechanism to generate replanned actions at every denoising step without retraining, thus forming a complete training-free framework for robot motion adaptation in unseen environments. Extensive evaluations have been conducted in both well-recognized simulation benchmarks and real robot tasks. Results show that RA-DP outperforms the state-of-the-art diffusion-based methods in terms of replanning frequency and success rate. Moreover, we show that our framework is theoretically compatible with any training-free guidance signal.
title RA-DP: Rapid Adaptive Diffusion Policy for Training-Free High-frequency Robotics Replanning
topic Robotics
url https://arxiv.org/abs/2503.04051