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High-Precision Transformer-Based Visual Servoing for Humanoid Robots in Aligning Tiny Objects

6 March 2025
Jialong Xue
Wei Gao
Yu Wang
Chao Ji
Dongdong Zhao
Shi Yan
Shiwu Zhang
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Abstract

High-precision tiny object alignment remains a common and critical challenge for humanoid robots in real-world. To address this problem, this paper proposes a vision-based framework for precisely estimating and controlling the relative position between a handheld tool and a target object for humanoid robots, e.g., a screwdriver tip and a screw head slot. By fusing images from the head and torso cameras on a robot with its head joint angles, the proposed Transformer-based visual servoing method can correct the handheld tool's positional errors effectively, especially at a close distance. Experiments on M4-M8 screws demonstrate an average convergence error of 0.8-1.3 mm and a success rate of 93\%-100\%. Through comparative analysis, the results validate that this capability of high-precision tiny object alignment is enabled by the Distance Estimation Transformer architecture and the Multi-Perception-Head mechanism proposed in this paper.

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@article{xue2025_2503.04862,
  title={ High-Precision Transformer-Based Visual Servoing for Humanoid Robots in Aligning Tiny Objects },
  author={ Jialong Xue and Wei Gao and Yu Wang and Chao Ji and Dongdong Zhao and Shi Yan and Shiwu Zhang },
  journal={arXiv preprint arXiv:2503.04862},
  year={ 2025 }
}
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