FlashBack: Consistency Model-Accelerated Shared Autonomy

Luzhe Sun, Jingtian Ji, Xiangshan Tan, Matthew Walter
Proceedings of The 9th Conference on Robot Learning, PMLR 305:924-940, 2025.

Abstract

Abstract: Shared autonomy is an enabling technology that provides users with control authority over robots that would otherwise be difficult if not impossible to directly control. Yet, standard methods make assumptions that limit their adoption in practice—for example, prior knowledge of the user’s goals or the objective (i.e., reward) function that they wish to optimize, knowledge of the user’s policy, or query-level access to the user during training. Diffusion-based approaches to shared autonomy do not make such assumptions and instead only require access to demonstrations of desired behaviors, while allowing the user to maintain control authority. However, these advantages have come at the expense of high computational complexity, which has made real-time shared autonomy all but impossible. To overcome this limitation, we propose Consistency Shared Autonomy (CSA), a shared autonomy framework that employs a consistency model-based formulation of diffusion. Key to CSA is that it employs the distilled probability flow of ordinary differential equations (PF ODE) to generate high-fidelity samples in a single step. This results in inference speeds significantly than what is possible with previous diffusion-based approaches to shared autonomy, enabling real-time assistance in complex domains with only a single function evaluation. Further, by intervening on flawed actions at intermediate states of the PF ODE, CSA enables varying levels of assistance. We evaluate CSA on a variety of challenging simulated and real-world robot control problems, demonstrating significant improvements over state-of-the-art methods both in terms of task performance and computational efficiency.

Cite this Paper


BibTeX
@InProceedings{pmlr-v305-sun25a, title = {FlashBack: Consistency Model-Accelerated Shared Autonomy}, author = {Sun, Luzhe and Ji, Jingtian and Tan, Xiangshan and Walter, Matthew}, booktitle = {Proceedings of The 9th Conference on Robot Learning}, pages = {924--940}, year = {2025}, editor = {Lim, Joseph and Song, Shuran and Park, Hae-Won}, volume = {305}, series = {Proceedings of Machine Learning Research}, month = {27--30 Sep}, publisher = {PMLR}, pdf = {https://raw.githubusercontent.com/mlresearch/v305/main/assets/sun25a/sun25a.pdf}, url = {https://proceedings.mlr.press/v305/sun25a.html}, abstract = {Abstract: Shared autonomy is an enabling technology that provides users with control authority over robots that would otherwise be difficult if not impossible to directly control. Yet, standard methods make assumptions that limit their adoption in practice—for example, prior knowledge of the user’s goals or the objective (i.e., reward) function that they wish to optimize, knowledge of the user’s policy, or query-level access to the user during training. Diffusion-based approaches to shared autonomy do not make such assumptions and instead only require access to demonstrations of desired behaviors, while allowing the user to maintain control authority. However, these advantages have come at the expense of high computational complexity, which has made real-time shared autonomy all but impossible. To overcome this limitation, we propose Consistency Shared Autonomy (CSA), a shared autonomy framework that employs a consistency model-based formulation of diffusion. Key to CSA is that it employs the distilled probability flow of ordinary differential equations (PF ODE) to generate high-fidelity samples in a single step. This results in inference speeds significantly than what is possible with previous diffusion-based approaches to shared autonomy, enabling real-time assistance in complex domains with only a single function evaluation. Further, by intervening on flawed actions at intermediate states of the PF ODE, CSA enables varying levels of assistance. We evaluate CSA on a variety of challenging simulated and real-world robot control problems, demonstrating significant improvements over state-of-the-art methods both in terms of task performance and computational efficiency.} }
Endnote
%0 Conference Paper %T FlashBack: Consistency Model-Accelerated Shared Autonomy %A Luzhe Sun %A Jingtian Ji %A Xiangshan Tan %A Matthew Walter %B Proceedings of The 9th Conference on Robot Learning %C Proceedings of Machine Learning Research %D 2025 %E Joseph Lim %E Shuran Song %E Hae-Won Park %F pmlr-v305-sun25a %I PMLR %P 924--940 %U https://proceedings.mlr.press/v305/sun25a.html %V 305 %X Abstract: Shared autonomy is an enabling technology that provides users with control authority over robots that would otherwise be difficult if not impossible to directly control. Yet, standard methods make assumptions that limit their adoption in practice—for example, prior knowledge of the user’s goals or the objective (i.e., reward) function that they wish to optimize, knowledge of the user’s policy, or query-level access to the user during training. Diffusion-based approaches to shared autonomy do not make such assumptions and instead only require access to demonstrations of desired behaviors, while allowing the user to maintain control authority. However, these advantages have come at the expense of high computational complexity, which has made real-time shared autonomy all but impossible. To overcome this limitation, we propose Consistency Shared Autonomy (CSA), a shared autonomy framework that employs a consistency model-based formulation of diffusion. Key to CSA is that it employs the distilled probability flow of ordinary differential equations (PF ODE) to generate high-fidelity samples in a single step. This results in inference speeds significantly than what is possible with previous diffusion-based approaches to shared autonomy, enabling real-time assistance in complex domains with only a single function evaluation. Further, by intervening on flawed actions at intermediate states of the PF ODE, CSA enables varying levels of assistance. We evaluate CSA on a variety of challenging simulated and real-world robot control problems, demonstrating significant improvements over state-of-the-art methods both in terms of task performance and computational efficiency.
APA
Sun, L., Ji, J., Tan, X. & Walter, M.. (2025). FlashBack: Consistency Model-Accelerated Shared Autonomy. Proceedings of The 9th Conference on Robot Learning, in Proceedings of Machine Learning Research 305:924-940 Available from https://proceedings.mlr.press/v305/sun25a.html.

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