Multi-View Global 2D-3D Registration Based on Branch and Bound Algorithm

Jin Pan, Z. Min, Ang Zhang, Han Ma, M. Meng
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引用次数: 7

Abstract

In image-guided minimally invasive surgery, the clinician relies on image guidance to observe, plan and navigate. In order to show invisible vessels or planning annotations in live X-ray images, or update the live information for planning, the correspondence establishment between 2D X-ray images and pre-operatively acquired 3D CT images is a fundamental step. Accurate image alignment is needed and can be provided by 2D-3D registration by bringing a pre-operative 3D image and intra-operative 2D image into the same coordinate. In this work, we propose a novel method to register 3D volume with multi-view 2D images. Based on the Branch and Bound algorithm, the method can globally search the optimal pose and find the correspondence. Compared to the single-view setting, the multi-view 2D image information can speed up the searching. Extensive experiments are conducted to evaluate the effectiveness of the proposed method. The accuracy is improved and the iteration numbers are reduced with the introduction of new views.
基于分支定界算法的多视图2D-3D全局配准
在图像引导下的微创手术中,临床医生依靠图像引导进行观察、计划和导航。为了在实时x线图像中显示不可见的血管或规划注释,或更新实时信息进行规划,建立二维x线图像与术前获取的三维CT图像之间的对应关系是一个基本步骤。需要精确的图像对齐,可以通过将术前3D图像和术中2D图像放入同一坐标的2D-3D配准来提供。在这项工作中,我们提出了一种新的方法来配准三维体与多视图二维图像。该方法基于分支定界算法,可以全局搜索最优位姿并找到对应关系。与单视图设置相比,多视图的二维图像信息可以加快搜索速度。进行了大量的实验来评估所提出方法的有效性。新视图的引入提高了精度,减少了迭代次数。
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