论文标题
一个学习驱动的框架,具有空间优化,用于手术缝合线重建和在多个拓扑和环境噪声下的自主抓握
A Learning-Driven Framework with Spatial Optimization For Surgical Suture Thread Reconstruction and Autonomous Grasping Under Multiple Topologies and Environmental Noises
论文作者
论文摘要
手术结束缚是手术中最基本,最重要的程序之一,高质量的结可以显着使患者的术后恢复有益。但是,长期手术很容易引起外科医生的疲劳,尤其是在乏味的伤口闭合任务中。在本文中,我们提出了一种基于视觉的方法来自动化缝合线握把,这是手术结绑带中的子任务,并且是缝线和循环操作之间的中间步骤。为了实现这一目标,对缝合线的三维(3D)信息的获取至关重要。为了实现这一目标,我们首先采用转移学习策略,通过从大型传统手术数据和现场设备获得的图像中学习信息来微调预训练的模型。因此,无论固有的环境噪音如何,都可以实现强大的缝合分段。我们进一步利用搜索策略,并根据对多个拓扑分析的分析来使用缝合线的序列推断。可以获得沿缝合线的像素级序列的确切结果,并可以使用我们优化的最短路径方法将它们进一步应用于3D形状重建。考虑到缝合标准的抓地力最终可以得到。广泛评估了有关环境噪声下缝合2D分割和订购序列推断的实验。通过V-REP中的仿真和使用通用机器人(UR)以及采用我们学习驱动的框架的Da Vinci Research套件(DVRK),通过使用通用机器人(UR)进行了与自动握把操作相关的结果。
Surgical knot tying is one of the most fundamental and important procedures in surgery, and a high-quality knot can significantly benefit the postoperative recovery of the patient. However, a longtime operation may easily cause fatigue to surgeons, especially during the tedious wound closure task. In this paper, we present a vision-based method to automate the suture thread grasping, which is a sub-task in surgical knot tying and an intermediate step between the stitching and looping manipulations. To achieve this goal, the acquisition of a suture's three-dimensional (3D) information is critical. Towards this objective, we adopt a transfer-learning strategy first to fine-tune a pre-trained model by learning the information from large legacy surgical data and images obtained by the on-site equipment. Thus, a robust suture segmentation can be achieved regardless of inherent environment noises. We further leverage a searching strategy with termination policies for a suture's sequence inference based on the analysis of multiple topologies. Exact results of the pixel-level sequence along a suture can be obtained, and they can be further applied for a 3D shape reconstruction using our optimized shortest path approach. The grasping point considering the suturing criterion can be ultimately acquired. Experiments regarding the suture 2D segmentation and ordering sequence inference under environmental noises were extensively evaluated. Results related to the automated grasping operation were demonstrated by simulations in V-REP and by robot experiments using Universal Robot (UR) together with the da Vinci Research Kit (dVRK) adopting our learning-driven framework.