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Prior Does Matter: Visual Navigation via Denoising Diffusion Bridge Models

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Recent advancements in diffusion-based imitation learning, which show impressive performance in modeling multimodal distributions and training stability, have led to substantial progress in various robot learning tasks. In visual navigation, previous diffusion-based policies typically generate action sequences by initiating from denoising Gaussian noise. However, the target action distribution often diverges significantly from Gaussian noise, leading to redundant denoising steps and increased learning complexity. Additionally, the sparsity of effective action distributions makes it challenging for the policy to generate accurate actions without guidance. To address these issues, we propose a novel, unified visual navigation framework leveraging the denoising diffusion bridge models named NaviBridger. This approach enables action generation by initiating from any informative prior actions, enhancing guidance and efficiency in the denoising process. We explore how diffusion bridges can enhance imitation learning in visual navigation tasks and further examine three source policies for generating prior actions. Extensive experiments in both simulated and real-world indoor and outdoor scenarios demonstrate that NaviBridger accelerates policy inference and outperforms the baselines in generating target action sequences. Code is available at https://github.com/hren20/NaiviBridger.

Hao Ren, Yiming Zeng, Zetong Bi, Zhaoliang Wan, Junlong Huang, Hui Cheng• 2025

Related benchmarks

TaskDatasetResultRank
Adaptation Task (Visual Navigation)2D-3D-S Indoor (simulation)
Collision Rate0.41
5
Adaptation Task (Visual Navigation)Citysim Outdoor (simulation)
Collision Rate30
5
Basic Task (Visual Navigation)2D-3D-S Indoor (simulation)
Collision Score0.61
5
Basic Task (Visual Navigation)Citysim Outdoor (simulation)
Collision Rate51
5
Point-Goal navigationStanford 2D-3D-S Indoor Basic Task
SR0.92
5
Point-Goal navigationStanford 2D-3D-S Indoor (Adaptation Task)
Success Rate88
5
Point-Goal navigationCitysim Outdoor Basic Task
SR (%)0.44
5
Point-Goal navigationCitysim Outdoor Adaptation Task
SR64
5
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