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Automatic Tool Landmark Detection for Stereo Vision in Robot-Assisted Retinal Surgery

机译:机器人辅助视网膜手术中立体视觉的自动工具地标检测

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摘要

Computer vision and robotics are being increasinglyapplied in medical interventions. Especially in interventions where extreme precision is required they could make a difference. One such application is robot-assisted retinal microsurgery. In recent works, such interventions are conducted under a stereo-microscope, and with a robot-controlled surgical tool. The complementarity of computer vision and robotics has however not yet been fully exploited. In order to improve the robot control we are interested in 3D reconstruction of the anatomy and in automatic tool localization using a stereo microscope. In this paper, we solve this problem for the first time using a single pipeline, starting from uncalibrated cameras to reach metric 3D reconstruction and registration, in retinal microsurgery. The key ingredients of our method are: (a) surgical tool landmark detection, and (b) 3D reconstruction with the stereo microscope, using the detected landmarks. To address the former, we propose a novel deep learning method that detects and recognizes keypoints in high definition images at higher than real-time speed. We use the detected 2D keypoints along with their corresponding 3D coordinates obtained from the robot sensors to calibrate the stereo microscope using an affine projection model. We design an online 3D reconstruction pipeline that makes use of smoothness constraints and performs robot-to-camera registration. The entire pipeline is extensively validated on open-sky porcine eye sequences. Quantitative and qualitative results are presented for all steps.
机译:计算机视觉和机器人技术正越来越多地应用于医疗干预中。特别是在需要极高精确度的干预措施中,它们可能会有所作为。一种这样的应用是机器人辅助的视网膜显微外科手术。在最近的工作中,这种干预是在体视显微镜下和用机器人控制的手术工具进行的。但是,计算机视觉和机器人技术的互补性尚未得到充分利用。为了改善机器人控制,我们对解剖结构的3D重建以及使用立体显微镜的自动工具定位感兴趣。在本文中,我们首次使用单个管道解决了这个问题,从未经校准的照相机开始,到视网膜显微外科手术中的公制3D重建和配准。我们方法的关键要素是:(a)手术工具界标检测,以及(b)使用检测到的界标通过体视显微镜进行3D重建。为了解决前者,我们提出了一种新颖的深度学习方法,该方法可以以高于实时的速度检测和识别高清图像中的关键点。我们使用检测到的2D关键点以及从机器人传感器获取的相应3D坐标来使用仿射投影模型校准立体显微镜。我们设计了一个在线3D重建管线,该管线利用了平滑度约束并执行了机器人到摄像机的配准。整个流水线已在露天猪眼序列上得到了广泛验证。给出了所有步骤的定量和定性结果。

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