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Virtual craniofacial reconstruction using computer vision, graph theory and geometric constraints

机译:利用计算机视觉,图论和几何约束进行虚拟颅面重建

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摘要

A novel solution to the problem of virtual craniofacial reconstruction using computer vision, graph theory and geometric constraints is proposed. Virtual craniofacial reconstruction is modeled along the lines of the well-known problem of rigid surface registration. The Iterative Closest Point (ICP) algorithm is first employed with the closest set computation performed using the Maximum Cardinality Minimum Weight (MCMW) bipartite graph matching algorithm. Next, the bounding boxes of the fracture surfaces, treated as cycle graphs, are employed to generate multiple candidate solutions based on the concept of graph automorphism. The best candidate solution is selected by exploiting local and global geometric constraints. Finally, the initialization of the ICP algorithm with the best candidate solution is shown to improve surface reconstruction accuracy and speed of convergence. Experimental results on Computed Tomography (CT) scans of real patients are presented.
机译:提出了一种利用计算机视觉,图论和几何约束条件解决虚拟颅面重建问题的新方法。虚拟颅面重建是按照众所周知的刚性曲面配准问题建模的。首先使用迭代最近点(ICP)算法,并使用最大基数最小权重(MCMW)二部图匹配算法执行最接近集合计算。接下来,基于图形自同构的概念,将断裂表面的边界框(视为循环图)用于生成多个候选解。通过利用局部和全局几何约束来选择最佳候选解决方案。最后,显示了使用最佳候选解决方案的ICP算法的初始化可以提高曲面重建的准确性和收敛速度。呈现了对真实患者进行计算机断层扫描(CT)扫描的实验结果。

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