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Main Authors: Hegde, Shashank, Das, Satyajeet, Salhotra, Gautam, Sukhatme, Gaurav S.
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2410.14040
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author Hegde, Shashank
Das, Satyajeet
Salhotra, Gautam
Sukhatme, Gaurav S.
author_facet Hegde, Shashank
Das, Satyajeet
Salhotra, Gautam
Sukhatme, Gaurav S.
contents With the increasing availability of open-source robotic data, imitation learning has become a promising approach for both manipulation and locomotion. Diffusion models are now widely used to train large, generalized policies that predict controls or trajectories, leveraging their ability to model multimodal action distributions. However, this generality comes at the cost of larger model sizes and slower inference, an acute limitation for robotic tasks requiring high control frequencies. Moreover, Diffusion Policy (DP), a popular trajectory-generation approach, suffers from a trade-off between performance and action horizon: fewer diffusion queries lead to larger trajectory chunks, which in turn accumulate tracking errors. To overcome these challenges, we introduce WARPD (World model Assisted Reactive Policy Diffusion), a method that generates closed-loop policies (weights for neural policies) directly, instead of open-loop trajectories. By learning behavioral distributions in parameter space rather than trajectory space, WARPD offers two major advantages: (1) extended action horizons with robustness to perturbations, while maintaining high task performance, and (2) significantly reduced inference costs. Empirically, WARPD outperforms DP in long-horizon and perturbed environments, and achieves multitask performance on par with DP while requiring only ~ 1/45th of the inference-time FLOPs per step.
format Preprint
id arxiv_https___arxiv_org_abs_2410_14040
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle WARPD: World model Assisted Reactive Policy Diffusion
Hegde, Shashank
Das, Satyajeet
Salhotra, Gautam
Sukhatme, Gaurav S.
Machine Learning
Artificial Intelligence
Robotics
With the increasing availability of open-source robotic data, imitation learning has become a promising approach for both manipulation and locomotion. Diffusion models are now widely used to train large, generalized policies that predict controls or trajectories, leveraging their ability to model multimodal action distributions. However, this generality comes at the cost of larger model sizes and slower inference, an acute limitation for robotic tasks requiring high control frequencies. Moreover, Diffusion Policy (DP), a popular trajectory-generation approach, suffers from a trade-off between performance and action horizon: fewer diffusion queries lead to larger trajectory chunks, which in turn accumulate tracking errors. To overcome these challenges, we introduce WARPD (World model Assisted Reactive Policy Diffusion), a method that generates closed-loop policies (weights for neural policies) directly, instead of open-loop trajectories. By learning behavioral distributions in parameter space rather than trajectory space, WARPD offers two major advantages: (1) extended action horizons with robustness to perturbations, while maintaining high task performance, and (2) significantly reduced inference costs. Empirically, WARPD outperforms DP in long-horizon and perturbed environments, and achieves multitask performance on par with DP while requiring only ~ 1/45th of the inference-time FLOPs per step.
title WARPD: World model Assisted Reactive Policy Diffusion
topic Machine Learning
Artificial Intelligence
Robotics
url https://arxiv.org/abs/2410.14040