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Object-Focus Actor for Data-efficient Robot Generalization Dexterous Manipulation

Object-Focus Actor for Data-efficient Robot Generalization Dexterous Manipulation

来源:Arxiv_logoArxiv
英文摘要

Robot manipulation learning from human demonstrations offers a rapid means to acquire skills but often lacks generalization across diverse scenes and object placements. This limitation hinders real-world applications, particularly in complex tasks requiring dexterous manipulation. Vision-Language-Action (VLA) paradigm leverages large-scale data to enhance generalization. However, due to data scarcity, VLA's performance remains limited. In this work, we introduce Object-Focus Actor (OFA), a novel, data-efficient approach for generalized dexterous manipulation. OFA exploits the consistent end trajectories observed in dexterous manipulation tasks, allowing for efficient policy training. Our method employs a hierarchical pipeline: object perception and pose estimation, pre-manipulation pose arrival and OFA policy execution. This process ensures that the manipulation is focused and efficient, even in varied backgrounds and positional layout. Comprehensive real-world experiments across seven tasks demonstrate that OFA significantly outperforms baseline methods in both positional and background generalization tests. Notably, OFA achieves robust performance with only 10 demonstrations, highlighting its data efficiency.

Yihang Li、Tianle Zhang、Xuelong Wei、Jiayi Li、Lin Zhao、Dongchi Huang、Zhirui Fang、Minhua Zheng、Wenjun Dai、Xiaodong He

自动化技术、自动化技术设备

Yihang Li,Tianle Zhang,Xuelong Wei,Jiayi Li,Lin Zhao,Dongchi Huang,Zhirui Fang,Minhua Zheng,Wenjun Dai,Xiaodong He.Object-Focus Actor for Data-efficient Robot Generalization Dexterous Manipulation[EB/OL].(2025-05-21)[2025-06-17].https://arxiv.org/abs/2505.15098.点此复制

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