计算机科学
截骨术
标准差
导纳
机器人
口腔正畸科
方案(数学)
还原(数学)
人工智能
基础(线性代数)
运动(物理)
控制系统
计算机视觉
模拟
控制(管理)
运动控制
虚拟现实
下颌骨(节肢动物口器)
3d打印
作者
Yingyan Deng,Chunheng Lu,Xinyu Liu,Yang He,Junchen Wang
标识
DOI:10.1109/wrcsara68202.2025.11194973
摘要
Precise and safe execution of maxillofacial osteotomy remains challenging due to complex anatomy and dynamic human-robot interaction. This study proposes a collaborative control system combining parametrized-surface virtual fixtures and admittance-based hybrid force-position control. The osteotomy surface is extracted from preoperative CT data, projected and spline-fitted to generate virtual constraint. An anisotropic admittance model ensures compliant motion in the cutting direction while enforcing geometric constraints in normal and depth directions. The control scheme was implemented on a UR5e manipulator and validated through three experimental trials on identical anatomical mandible models. Postoperative CT scans were registered to preoperative plans, and cutting accuracy was evaluated using 13 anatomical landmarks per model. The overall mean error was 0.81 mm, with a maximum deviation of 1.48 mm and a standard deviation of 0.53 mm. 3D error map revealed localized deviations. The robot demonstrated stable and responsive behavior across trials, with smooth tool interaction and no safety violations. These results confirm that the proposed system achieves millimeter-level precision while supporting intuitive human-robot cooperation, offering a promising basis for future clinical translation.
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