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Autori principali: Wang, Jincheng, Bao, Lingfan, Yang, Tong, Plasencia, Diego Martinez, Jiao, Jianhao, Kanoulas, Dimitrios
Natura: Preprint
Pubblicazione: 2026
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Accesso online:https://arxiv.org/abs/2602.00923
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author Wang, Jincheng
Bao, Lingfan
Yang, Tong
Plasencia, Diego Martinez
Jiao, Jianhao
Kanoulas, Dimitrios
author_facet Wang, Jincheng
Bao, Lingfan
Yang, Tong
Plasencia, Diego Martinez
Jiao, Jianhao
Kanoulas, Dimitrios
contents The challenge of generating reliable local plans has long hindered practical applications in highly cluttered and dynamic environments. Key fundamental bottlenecks include acquiring large-scale expert demonstrations across diverse scenes and improving learning efficiency with limited data. This paper proposes SanD-Planner, a sample-efficient diffusion-based local planner that conducts depth image-based imitation learning within the clamped B-spline space. By operating within this compact space, the proposed algorithm inherently yields smooth outputs with bounded prediction errors over local supports, naturally aligning with receding-horizon execution. Integration of an ESDF-based safety checker with explicit clearance and time-to-completion metrics further reduces the training burden associated with value-function learning for feasibility assessment. Experiments show that training with $500$ episodes (merely $0.25\%$ of the demonstration scale used by the baseline), SanD-Planner achieves state-of-the-art performance on the evaluated open benchmark, attaining success rates of $90.1\%$ in simulated cluttered environments and $72.0\%$ in indoor simulations. The performance is further proven by demonstrating zero-shot transferability to realistic experimentation in both 2D and 3D scenes. The dataset and pre-trained models will also be open-sourced.
format Preprint
id arxiv_https___arxiv_org_abs_2602_00923
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle SanD-Planner: Sample-Efficient Diffusion Planner in B-Spline Space for Robust Local Navigation
Wang, Jincheng
Bao, Lingfan
Yang, Tong
Plasencia, Diego Martinez
Jiao, Jianhao
Kanoulas, Dimitrios
Robotics
The challenge of generating reliable local plans has long hindered practical applications in highly cluttered and dynamic environments. Key fundamental bottlenecks include acquiring large-scale expert demonstrations across diverse scenes and improving learning efficiency with limited data. This paper proposes SanD-Planner, a sample-efficient diffusion-based local planner that conducts depth image-based imitation learning within the clamped B-spline space. By operating within this compact space, the proposed algorithm inherently yields smooth outputs with bounded prediction errors over local supports, naturally aligning with receding-horizon execution. Integration of an ESDF-based safety checker with explicit clearance and time-to-completion metrics further reduces the training burden associated with value-function learning for feasibility assessment. Experiments show that training with $500$ episodes (merely $0.25\%$ of the demonstration scale used by the baseline), SanD-Planner achieves state-of-the-art performance on the evaluated open benchmark, attaining success rates of $90.1\%$ in simulated cluttered environments and $72.0\%$ in indoor simulations. The performance is further proven by demonstrating zero-shot transferability to realistic experimentation in both 2D and 3D scenes. The dataset and pre-trained models will also be open-sourced.
title SanD-Planner: Sample-Efficient Diffusion Planner in B-Spline Space for Robust Local Navigation
topic Robotics
url https://arxiv.org/abs/2602.00923