A fast and automatic calibration of the projectory images for 3D reconstruction of the branchy structures

Ali Iskurt, Y. Becerikli, K. Mahmutyazicioglu
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引用次数: 4

Abstract

While visualizing three dimensional (3D) structure of the coronary arteries, the projectory X-ray images can produce 3D tree of them up to a certain accuracy level with a lower dose of radiation when compared to computer tomography (CT). Here, in this study a novel and complete automatic system is designed which covers preprocessing, segmentation, matching and reconstruction steps for that purpose. First an automatic and novel pattern recognition technique is applied for the extraction of the bifurcation points with their diameters recorded in a map. Then, a novel optimization algorithm is run for matching the branches based on that map and the epipolar geometry of stereopsis. Finally, cut branches are fixed one by one at the bifurcations for completing the 3D reconstruction. The method favors the similar ones in the literature with this novelty since it inherently prevents the wrong overlapping of branches. Other essential problems like correct detection of bifurcation, detection of the true calibration parameters and fast overlapping of matched branches are addressed at acceptable levels. The precision of bifurcation extraction is high at 97% with 96% sensitivity. Accuracy of the vessel centerlines has root-mean-square (rms) error smaller than 0.5 mm for 10 different patients. For phantom model, rms error is 0.75 ± 0.8 mm in 3D localization.
一种用于分支结构三维重建的投影图像快速自动标定方法
在可视化冠状动脉的三维(3D)结构时,与计算机断层扫描(CT)相比,投影x射线图像可以以较低的辐射剂量产生达到一定精度的冠状动脉三维树状图。为此,本文设计了一个全新的、完整的自动化系统,包括预处理、分割、匹配和重建等步骤。首先,采用一种新颖的自动模式识别技术提取分岔点,并在地图上记录其直径;在此基础上,提出了一种新的分支匹配优化算法。最后在分岔处逐个固定截枝,完成三维重建。该方法有利于文献中具有这种新颖性的类似方法,因为它固有地防止了分支的错误重叠。其他关键问题,如正确检测分岔,检测真实的校准参数和匹配分支的快速重叠在可接受的水平上得到解决。分岔提取精密度为97%,灵敏度为96%。10例不同患者的血管中心线精度均方根误差小于0.5 mm。对于幻影模型,三维定位的均方根误差为0.75±0.8 mm。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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