首页> 外文会议>International Conference on Intelligent Computing(ICIC 2007); 20070821-24; Qingdao(CN) >Automatic Reconstruction of a Patient-Specific Surface Model of a Proximal Femur from Calibrated X-Ray Images Via Bayesian Filters
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Automatic Reconstruction of a Patient-Specific Surface Model of a Proximal Femur from Calibrated X-Ray Images Via Bayesian Filters

机译:通过贝叶斯滤波器从校准的X射线图像自动重建患者股骨近端股骨表面模型

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摘要

Automatic reconstruction of patient-specific 3D bone model from a limited number of calibrated X-ray images is not a trivial task. Previous published works require either knowledge about anatomical landmarks, which are normally obtained by interactive reconstruction, or a supervised initialization. In this paper, we present an automatic 2D/3D reconstruction scheme and show its applications to reconstruct a surface model of the proximal femur from a limited number of calibrated X-ray images. In our scheme, the geometrical parameters of the proximal femur are obtained by using a Bayesian filter based inference algorithm to fit a parameterized multiple-component geometrical model to the input images. The estimated geometrical parameters are then used to initialize a point distribution model based 2D/3D reconstruction scheme for an accurate reconstruction of a surface model of the proximal femur. Here we report the quantitative and qualitative evaluation results on 10 dry cadaveric bones. Compared to the manual initialization, the automated initialization results in a little bit less accurate reconstruction but has the advantages of elimination of user interactions.
机译:从有限数量的已校准X射线图像中自动重建患者特定的3D骨骼模型并非易事。以前发表的作品需要有关解剖标志的知识(通常是通过交互式重建获得的)或有监督的初始化。在本文中,我们提出了一种自动2D / 3D重建方案,并展示了其在有限数量的校准X射线图像中重建股骨近端表面模型的应用。在我们的方案中,通过使用基于贝叶斯过滤器的推理算法将参数化的多分量几何模型拟合到输入图像中,来获得股骨近端的几何参数。然后,将估计的几何参数用于初始化基于点分布模型的2D / 3D重建方案,以精确重建股骨近端的表面模型。在这里,我们报告了对10个干燥尸体骨头的定量和定性评估结果。与手动初始化相比,自动初始化会导致重构的准确性降低,但具有消除用户交互的优势。

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