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Main Authors: Gu, Junwen, Wu, Zhiheng, Si, Pengxuan, Qiu, Shuang, Zhang, Zhentao, Feng, Yukai, Sun, Luoyang, Luo, Laien, Yu, Lianyi, Wang, Jian, Wu, Zhengxing
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2510.07869
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author Gu, Junwen
Wu, Zhiheng
Si, Pengxuan
Qiu, Shuang
Zhang, Zhentao
Feng, Yukai
Sun, Luoyang
Luo, Laien
Yu, Lianyi
Wang, Jian
Wu, Zhengxing
author_facet Gu, Junwen
Wu, Zhiheng
Si, Pengxuan
Qiu, Shuang
Zhang, Zhentao
Feng, Yukai
Sun, Luoyang
Luo, Laien
Yu, Lianyi
Wang, Jian
Wu, Zhengxing
contents Underwater environments pose unique challenges for robotic navigation and manipulation. While existing research has primarily focused on task-specific methods, studies on general-purpose intelligence for multi-task execution remain scarce. To address this gap, we propose a unified framework for general-purpose underwater robots that integrates perception and action driven by language instructions. First, we develop a data synthesis pipeline to construct USIM, a simulation-based dataset which comprises over 905K frames from 2275 trajectories, totaling approximately 25 hours of BlueROV2 interactions. Furthermore, we propose U0, a vision-language-action (VLA) model capable of executing various tasks from obstacle-avoidance navigation to three-dimensional mobile manipulation. The model features a convolution-attention-based perception (CAP) module, which incorporates target pose estimation as an auxiliary task to explicitly bolster the model's spatial awareness. For evaluation, we establish a systematic assessment framework and an automated pipeline encompassing both offline metrics and online task execution. Experimental results demonstrate that the USIM dataset significantly empowers existing VLA models to adapt to underwater scenarios. Notably, our U0 model achieves state-of-the-art performance: it reduces the offline mean action prediction error to 0.0359 and achieves an overall online success rate of 43.1%, marking a 5.5% improvement over existing competitive baselines (below 37.6%), with navigation tasks reaching as high as 87.5%. These results validate the feasibility of general-purpose intelligence in underwater robotics, providing a foundation for scalable dataset synthesis and aquatic embodied agents.
format Preprint
id arxiv_https___arxiv_org_abs_2510_07869
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle USIM and U0: A Vision-Language-Action Dataset and Model for General Underwater Robots
Gu, Junwen
Wu, Zhiheng
Si, Pengxuan
Qiu, Shuang
Zhang, Zhentao
Feng, Yukai
Sun, Luoyang
Luo, Laien
Yu, Lianyi
Wang, Jian
Wu, Zhengxing
Robotics
Underwater environments pose unique challenges for robotic navigation and manipulation. While existing research has primarily focused on task-specific methods, studies on general-purpose intelligence for multi-task execution remain scarce. To address this gap, we propose a unified framework for general-purpose underwater robots that integrates perception and action driven by language instructions. First, we develop a data synthesis pipeline to construct USIM, a simulation-based dataset which comprises over 905K frames from 2275 trajectories, totaling approximately 25 hours of BlueROV2 interactions. Furthermore, we propose U0, a vision-language-action (VLA) model capable of executing various tasks from obstacle-avoidance navigation to three-dimensional mobile manipulation. The model features a convolution-attention-based perception (CAP) module, which incorporates target pose estimation as an auxiliary task to explicitly bolster the model's spatial awareness. For evaluation, we establish a systematic assessment framework and an automated pipeline encompassing both offline metrics and online task execution. Experimental results demonstrate that the USIM dataset significantly empowers existing VLA models to adapt to underwater scenarios. Notably, our U0 model achieves state-of-the-art performance: it reduces the offline mean action prediction error to 0.0359 and achieves an overall online success rate of 43.1%, marking a 5.5% improvement over existing competitive baselines (below 37.6%), with navigation tasks reaching as high as 87.5%. These results validate the feasibility of general-purpose intelligence in underwater robotics, providing a foundation for scalable dataset synthesis and aquatic embodied agents.
title USIM and U0: A Vision-Language-Action Dataset and Model for General Underwater Robots
topic Robotics
url https://arxiv.org/abs/2510.07869