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Autori principali: Wang, Xiangchen, Zhu, Weiye, Wang, Teng, Geng, TianTian, Zhang, Zekai, Qi, Zhiyuan, Yang, Jinyu, Zheng, Feng
Natura: Preprint
Pubblicazione: 2026
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Accesso online:https://arxiv.org/abs/2604.19536
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author Wang, Xiangchen
Zhu, Weiye
Wang, Teng
Geng, TianTian
Zhang, Zekai
Qi, Zhiyuan
Yang, Jinyu
Zheng, Feng
author_facet Wang, Xiangchen
Zhu, Weiye
Wang, Teng
Geng, TianTian
Zhang, Zekai
Qi, Zhiyuan
Yang, Jinyu
Zheng, Feng
contents Recent navigation systems achieve strong benchmark results, yet real-world deployment often remains visibly stop-and-go. This bottleneck arises because the sense-inference-execution loop is still blocking: after each new observation, the controller must wait for sensing, transmission, and inference before motion can continue. Reducing action-generation cost alone therefore does not remove redundant waiting. To address this issue, we present LiveVLN, a training-free framework for more continuous embodied navigation by augmenting pretrained VLM navigators with multi-step action continuation. Instead of pausing for each full sense-and-inference round, LiveVLN overlaps execution with the processing of newly arrived observations, allowing refreshed future actions to be handed off before the current executable prefix is exhausted. This design keeps actions continuously available during motion, reducing idle waiting and enabling smoother online execution. The framework operates at runtime and can be integrated with compatible pretrained VLM navigators. Across R2R and RxR, LiveVLN preserves benchmark performance while reducing waiting time and improving action availability. In real-world deployments, it cuts average episode waiting time by up to $77.7\%$ and shortens wall-clock episode time by $12.6\%$ on StreamVLN and $19.6\%$ on NaVIDA, yielding more coherent execution during deployment. Code is available at https://github.com/NIneeeeeem/LiveVLN.
format Preprint
id arxiv_https___arxiv_org_abs_2604_19536
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle LiveVLN: Breaking the Stop-and-Go Loop in Vision-Language Navigation
Wang, Xiangchen
Zhu, Weiye
Wang, Teng
Geng, TianTian
Zhang, Zekai
Qi, Zhiyuan
Yang, Jinyu
Zheng, Feng
Robotics
Recent navigation systems achieve strong benchmark results, yet real-world deployment often remains visibly stop-and-go. This bottleneck arises because the sense-inference-execution loop is still blocking: after each new observation, the controller must wait for sensing, transmission, and inference before motion can continue. Reducing action-generation cost alone therefore does not remove redundant waiting. To address this issue, we present LiveVLN, a training-free framework for more continuous embodied navigation by augmenting pretrained VLM navigators with multi-step action continuation. Instead of pausing for each full sense-and-inference round, LiveVLN overlaps execution with the processing of newly arrived observations, allowing refreshed future actions to be handed off before the current executable prefix is exhausted. This design keeps actions continuously available during motion, reducing idle waiting and enabling smoother online execution. The framework operates at runtime and can be integrated with compatible pretrained VLM navigators. Across R2R and RxR, LiveVLN preserves benchmark performance while reducing waiting time and improving action availability. In real-world deployments, it cuts average episode waiting time by up to $77.7\%$ and shortens wall-clock episode time by $12.6\%$ on StreamVLN and $19.6\%$ on NaVIDA, yielding more coherent execution during deployment. Code is available at https://github.com/NIneeeeeem/LiveVLN.
title LiveVLN: Breaking the Stop-and-Go Loop in Vision-Language Navigation
topic Robotics
url https://arxiv.org/abs/2604.19536