Visual Guidance and Automatic Control for Robotic Personalized Stent Graft Manufacturing

Yu Guo, Miao Sun, F. P. Lo, Benny P. L. Lo
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Abstract

Personalized stent graft is designed to treat Abdominal Aortic Aneurysms (AAA). Due to the individual difference in arterial structures, stent graft has to be custom made for each AAA patient. Robotic platforms for autonomous personalized stent graft manufacturing have been proposed in recently which rely upon stereo vision systems for coordinating multiple robots for fabricating customized stent grafts. This paper proposes a novel hybrid vision system for real-time visual-sevoing for personalized stent-graft manufacturing. To coordinate the robotic arms, this system is based on projecting a dynamic stereo microscope coordinate system onto a static wide angle view stereo webcam coordinate system. The multiple stereo camera configuration enables accurate localization of the needle in 3D during the sewing process. The scale-invariant feature transform (SIFT) method and color filtering are implemented for stereo matching and feature identifications for object localization. To maintain the clear view of the sewing process, a visual-servoing system is developed for guiding the stereo microscopes for tracking the needle movements. The deep deterministic policy gradient (DDPG) reinforcement learning algorithm is developed for real-time intelligent robotic control. Experimental results have shown that the robotic arm can learn to reach the desired targets autonomously.
机器人个性化支架制造的视觉引导与自动控制
个体化支架移植被设计用于治疗腹主动脉瘤(AAA)。由于动脉结构的个体差异,每个AAA患者都需要定制支架。自主个性化支架制造机器人平台最近被提出,该平台依赖于立体视觉系统来协调多个机器人来制造定制支架。本文提出了一种用于个性化支架制造的实时视觉检测的新型混合视觉系统。为了协调机械臂,该系统基于将动态立体显微镜坐标系投影到静态广角立体网络摄像头坐标系上。在缝纫过程中,多重立体摄像头配置可以在3D中精确定位针。采用尺度不变特征变换(SIFT)方法和颜色滤波方法实现立体匹配和目标定位的特征识别。为了保持缝纫过程的清晰视图,开发了一个视觉伺服系统来引导立体显微镜跟踪针的运动。针对智能机器人的实时控制问题,提出了深度确定性策略梯度(DDPG)强化学习算法。实验结果表明,该机械臂能够自主学习达到预期目标。
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