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首页> 外文期刊>Medical Physics >Dense GPU-enhanced surface reconstruction from stereo endoscopic images for intraoperative registration
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Dense GPU-enhanced surface reconstruction from stereo endoscopic images for intraoperative registration

机译:从立体内窥镜图像进行密集GPU增强的表面重建以进行术中配准

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Purpose: In laparoscopic surgery, soft tissue deformations substantially change the surgical site, thus impeding the use of preoperative planning during intraoperative navigation. Extracting depth information from endoscopic images and building a surface model of the surgical field-of-view is one way to represent this constantly deforming environment. The information can then be used for intraoperative registration. Stereo reconstruction is a typical problem within computer vision. However, most of the available methods do not fulfill the specific requirements in a minimally invasive setting such as the need of real-time performance, the problem of view-dependent specular reflections and large curved areas with partly homogeneous or periodic textures and occlusions. Methods: In this paper, the authors present an approach toward intraoperative surface reconstruction based on stereo endoscopic images. The authors describe our answer to this problem through correspondence analysis, disparity correction and refinement, 3D reconstruction, point cloud smoothing and meshing. Real-time performance is achieved by implementing the algorithms on the gpu. The authors also present a new hybrid cpu-gpu algorithm that unifies the advantages of the cpu and the gpu version. Results: In a comprehensive evaluation using in vivo data, in silico data from the literature and virtual data from a newly developed simulation environment, the cpu, the gpu, and the hybrid cpu-gpu versions of the surface reconstruction are compared to a cpu and a gpu algorithm from the literature. The recommended approach toward intraoperative surface reconstruction can be conducted in real-time depending on the image resolution (20 fps for the gpu and 14fps for the hybrid cpu-gpu version on resolution of 640×480). It is robust to homogeneous regions without texture, large image changes, noise or errors from camera calibration, and it reconstructs the surface down to sub millimeter accuracy. In all the experiments within the simulation environment, the mean distance to ground truth data is between 0.05 and 0.6 mm for the hybrid cpu-gpu version. The hybrid cpu-gpu algorithm shows a much more superior performance than its cpu and gpu counterpart (mean distance reduction 26% and 45%, respectively, for the experiments in the simulation environment). Conclusions: The recommended approach for surface reconstruction is fast, robust, and accurate. It can represent changes in the intraoperative environment and can be used to adapt a preoperative model within the surgical site by registration of these two models.
机译:目的:在腹腔镜手术中,软组织变形会极大地改变手术部位,从而妨碍在术中导航期间进行术前计划。从内窥镜图像中提取深度信息并建立手术视野的表面模型是代表这种不断变形的环境的一种方法。该信息然后可以用于术中注册。立体声重建是计算机视觉中的典型问题。但是,大多数可用方法在微创环境中无法满足特定要求,例如实时性能需求,与视图有关的镜面反射问题以及具有部分均质或周期性纹理和遮挡的大弯曲区域。方法:在本文中,作者提出了一种基于立体内窥镜图像的术中表面重建的方法。作者通过对应分析,视差校正和细化,3D重建,点云平滑和网格划分来描述我们对这个问题的答案。实时性能是通过在GPU上实现算法来实现的。作者还提出了一种新的混合cpu-gpu算法,该算法统一了cpu和gpu版本的优点。结果:在使用体内数据的综合评估中,将文献中的计算机模拟数据和新开发的仿真环境中的虚拟数据(表面重建的cpu,gpu和混合cpu-gpu版本)与cpu和文献中的gpu算法。可以根据图像分辨率(gpu为20 fps,混合cpu-gpu版本为640×480的分辨率为14fps)实时进行术中表面重建的推荐方法。它对没有纹理,图像变化较大,噪声或相机校准错误的均质区域具有鲁棒性,并且可以将表面重建到亚毫米精度。在模拟环境中的所有实验中,混合cpu-gpu版本与地面真实数据的平均距离在0.05到0.6 mm之间。混合cpu-gpu算法显示出比其cpu和gpu同类算法更好的性能(对于模拟环境中的实验,平均距离分别减少26%和45%)。结论:推荐的表面重建方法是快速,可靠和准确的。它可以代表术中环境的变化,并且可以通过注册这两种模型来在手术部位内适应术前模型。

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