避障
人工智能
适应性
机器人学
雅可比矩阵与行列式
计算机科学
机器人
视觉伺服
控制工程
控制器(灌溉)
计算机视觉
成像体模
残余物
弹道
代表(政治)
模型预测控制
夹持器
工程类
鲁棒控制
障碍物
任务(项目管理)
控制系统
操作员(生物学)
路径(计算)
运动学
机器人运动学
运动规划
控制理论(社会学)
医疗机器人
运动控制
模拟
控制(管理)
作者
Mohammadreza Kasaei,Mostafa Ghobadi,Mohsen Khadem
标识
DOI:10.48550/arxiv.2510.12332
摘要
This paper presents a shape-aware whole-body control framework for tendon-driven continuum robots with direct application to endoluminal surgical navigation. Endoluminal procedures, such as bronchoscopy, demand precise and safe navigation through tortuous, patient-specific anatomy where conventional tip-only control often leads to wall contact, tissue trauma, or failure to reach distal targets. To address these challenges, our approach combines a physics-informed backbone model with residual learning through an Augmented Neural ODE, enabling accurate shape estimation and efficient Jacobian computation. A sampling-based Model Predictive Path Integral (MPPI) controller leverages this representation to jointly optimize tip tracking, backbone conformance, and obstacle avoidance under actuation constraints. A task manager further enhances adaptability by allowing real-time adjustment of objectives, such as wall clearance or direct advancement, during tele-operation. Extensive simulation studies demonstrate millimeter-level accuracy across diverse scenarios, including trajectory tracking, dynamic obstacle avoidance, and shape-constrained reaching. Real-robot experiments on a bronchoscopy phantom validate the framework, showing improved lumen-following accuracy, reduced wall contacts, and enhanced adaptability compared to joystick-only navigation and existing baselines. These results highlight the potential of the proposed framework to increase safety, reliability, and operator efficiency in minimally invasive endoluminal surgery, with broader applicability to other confined and safety-critical environments.
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