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Visual SLAM and Surface Reconstruction for Abdominal Minimally Invasive Surgery.

机译:腹部微创手术的视觉SLAM和表面重建。

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摘要

Depth information of tissue surfaces and laparoscope poses are crucial for accurate surgical guidance and navigation in Computer Assisted Surgeries (CAS). Intra-operative Three Dimensional (3D) reconstruction and laparoscope localization are therefore two fundamental tasks in CAS. This dissertation focuses on the abdominal Minimally Invasive Surgeries (MIS) and presents laparoscopic-video-based methods for these two tasks.;Different kinds of methods have been presented to recover 3D surface structures of surgical scenes in MIS. Those methods are mainly based on laser, structured light, time-of-flight cameras, and video cameras. Among them, laparoscopic-video-based surface reconstruction techniques have many significant advantages. Specifically, they are non-invasive, provide intra-operative information, and do not introduce extra-hardware to the current surgical platform. On the other side, laparoscopic-video-based 3D reconstruction and laparoscope localization are challenging tasks due to the specialties of the abdominal imaging environment. The well-known difficulties include: low texture, homogeneous areas, tissue deformations, and so on. The goal of this dissertation is to design novel 3D reconstruction and laparoscope localization methods and overcome those challenges from the abdominal imaging environment.;Two novel methods are proposed to achieve accurate 3D reconstruction for MIS. The first method is based on the detection of distinctive image features, which is difficult in MIS images due to the low-texture and homogeneous tissue surfaces. To overcome this problem, this dissertation first introduces new types of image features for MIS images based on blood vessels on tissue surfaces and designs novel methods to efficiently detect them. After vessel features have been detected, novel methods are presented to match them in stereo images and 3D vessels can be recovered for each frame. Those 3D vessels from different views are integrated together to obtain a global 3D vessel network and Poisson reconstruction is applied to achieve large-area dense surface reconstruction.;The second method is texture-independent and does not rely on the detection of image features. Instead, it proposes to mount a single-point light source on the abdominal wall. Shadows are cast on tissue surfaces when surgical instruments are waving in front of the light. Shadow boundaries are detected and matched in stereo images to recover the depth information. The recovered 3D shadow curves are interpolated to achieve dense reconstruction of tissue surfaces.;One novel stereoscope localization method is designed specifically for the abdominal environment. The method relies on RANdom SAmple Consensus (RANSAC) to differentiate rigid points and deforming points. Since no assumption is made on the tissue deformations, the proposed methods is able to handle general tissue deformations and achieve accurate laparoscope localization results in the abdominal MIS environment.;With the stereoscope localization results and the large-area dense surface reconstruction, a new scene visualization system, periphery augmented system, is designed to augment the peripheral areas of the original video so that surgeons can have a larger field of view. A user-evaluation system is designed to compare the periphery augmented system with the original MIS video. 30 subjects including 4 surgeons specialized in abdominal MIS participate the evaluation and a numerical measure is defined to represent their understanding of surgical scenes. T-test is performed on the numerical errors and the null hypothesis that the periphery augmented system and the original video have the same mean of errors is rejected. In other words, the results validate that the periphery augmented system improves users' understanding and awareness of surgical scenes.
机译:组织表面和腹腔镜姿势的深度信息对于计算机辅助手术(CAS)中的准确手术指导和导航至关重要。因此,术中三维(3D)重建和腹腔镜定位是CAS的两个基本任务。本文主要针对腹部微创手术(MIS),提出了基于腹腔镜视频的两种方法。提出了多种方法来恢复MIS手术场景的3D表面结构。这些方法主要基于激光,结构光,飞行时间相机和摄像机。其中,基于腹腔镜视频的表面重建技术具有许多显着优势。具体而言,它们是非侵入性的,可提供术中信息,并且不会将额外的硬件引入当前的手术平台。另一方面,由于腹部成像环境的特殊性,基于腹腔镜视频的3D重建和腹腔镜定位是具有挑战性的任务。众所周知的困难包括:低纹理,均匀区域,组织变形等。本文的目的是设计新颖的3D重建和腹腔镜定位方法,克服腹部成像环境带来的挑战。提出了两种新颖的方法来实现MIS的精确3D重建。第一种方法基于特殊图像特征的检测,由于纹理低且组织表面均匀,在MIS图像中很难实现。为了克服这个问题,本文首先介绍了基于组织表面血管的MIS图像的新型图像特征,并设计了有效检测它们的新颖方法。在检测到血管特征之后,提出了新颖的方法以将其与立体图像进行匹配,并且可以针对每个帧恢复3D血管。将那些来自不同视图的3D血管整合在一起以获得一个全局3D血管网络,并应用泊松重建来实现大面积的密集表面重建。第二种方法与纹理无关,并且不依赖于图像特征的检测。相反,它建议在腹壁上安装一个单点光源。当手术器械在灯光前挥舞时,阴影会投射在组织表面。在立体图像中检测并匹配阴影边界以恢复深度信息。对恢复的3D阴影曲线进行插值以实现组织表面的密集重建。;一种专门针对腹部环境的新颖的立体镜定位方法。该方法依赖于随机抽样共识(RANSAC)来区分刚性点和变形点。由于无需对组织变形进行假设,因此该方法能够处理一般的组织变形,并在腹部MIS环境中实现精确的腹腔镜定位结果。借助立体定位结果和大面积致密表面重建,新的场景可视化系统,即外围增强系统,旨在增强原始视频的外围区域,从而使外科医生可以拥有更大的视野。设计了一个用户评估系统,以将外围增强系统与原始MIS视频进行比较。包括4名腹部MIS的外科医生在内的30位受试者参加了评估,并定义了一个数字量度来表示他们对手术场景的理解。对数字误差执行T检验,并且拒绝外围增强系统和原始视频具有相同均值误差的零假设。换句话说,结果证实外围增强系统改善了用户对手术场景的理解和认识。

著录项

  • 作者

    Lin, Bingxiong.;

  • 作者单位

    University of South Florida.;

  • 授予单位 University of South Florida.;
  • 学科 Computer science.;Robotics.
  • 学位 Ph.D.
  • 年度 2015
  • 页码 133 p.
  • 总页数 133
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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