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Main Authors: Liu, Zhaoyang, Pan, Mokai, Wang, Zhongyi, Zhu, Kaizhen, Lu, Haotao, Zhang, Haipeng, Wang, Jingya, Shi, Ye
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2512.07212
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author Liu, Zhaoyang
Pan, Mokai
Wang, Zhongyi
Zhu, Kaizhen
Lu, Haotao
Zhang, Haipeng
Wang, Jingya
Shi, Ye
author_facet Liu, Zhaoyang
Pan, Mokai
Wang, Zhongyi
Zhu, Kaizhen
Lu, Haotao
Zhang, Haipeng
Wang, Jingya
Shi, Ye
contents Imitation learning with diffusion models has advanced robotic control by capturing the multi-modal action distributions. However, existing methods typically treat observations only as high-level conditions to the denoising network, rather than integrating them into the stochastic dynamics of the diffusion process itself. As a result, the sampling is forced to begin from random noise, weakening the coupling between perception and control and often yielding suboptimal performance. We propose BridgePolicy, a generative visuomotor policy that directly integrates observations into the stochastic dynamics via a diffusion-bridge formulation. By constructing an observation-informed trajectory, BridgePolicy enables sampling to start from a rich and informative prior rather than random noise, substantially improving precision and reliability in control. A key difficulty is that diffusion bridge normally connects distributions of matched dimensionality, while robotic observations are heterogeneous and not naturally aligned with actions. To overcome this, we introduce a multi-modal fusion module and a semantic aligner to unify the visual and state inputs and align the observations with action representations, making diffusion bridge applicable to heterogeneous robot data. Extensive experiments across 52 simulation tasks on three benchmarks and 5 real-world tasks demonstrate that BridgePolicy consistently outperforms state-of-the-art generative policies.
format Preprint
id arxiv_https___arxiv_org_abs_2512_07212
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Sample from What You See: Visuomotor Policy Learning via Diffusion Bridge with Observation-Embedded Stochastic Differential Equation
Liu, Zhaoyang
Pan, Mokai
Wang, Zhongyi
Zhu, Kaizhen
Lu, Haotao
Zhang, Haipeng
Wang, Jingya
Shi, Ye
Artificial Intelligence
Machine Learning
Imitation learning with diffusion models has advanced robotic control by capturing the multi-modal action distributions. However, existing methods typically treat observations only as high-level conditions to the denoising network, rather than integrating them into the stochastic dynamics of the diffusion process itself. As a result, the sampling is forced to begin from random noise, weakening the coupling between perception and control and often yielding suboptimal performance. We propose BridgePolicy, a generative visuomotor policy that directly integrates observations into the stochastic dynamics via a diffusion-bridge formulation. By constructing an observation-informed trajectory, BridgePolicy enables sampling to start from a rich and informative prior rather than random noise, substantially improving precision and reliability in control. A key difficulty is that diffusion bridge normally connects distributions of matched dimensionality, while robotic observations are heterogeneous and not naturally aligned with actions. To overcome this, we introduce a multi-modal fusion module and a semantic aligner to unify the visual and state inputs and align the observations with action representations, making diffusion bridge applicable to heterogeneous robot data. Extensive experiments across 52 simulation tasks on three benchmarks and 5 real-world tasks demonstrate that BridgePolicy consistently outperforms state-of-the-art generative policies.
title Sample from What You See: Visuomotor Policy Learning via Diffusion Bridge with Observation-Embedded Stochastic Differential Equation
topic Artificial Intelligence
Machine Learning
url https://arxiv.org/abs/2512.07212