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Use of a Dense Surface Point Distribution Model in a Three-Stage Anatomical Shape Reconstruction from Sparse Information for Computer Assisted Orthopaedic Surgery: A Preliminary Study

机译:在计算机辅助矫形外科稀疏信息中使用致密表面点分布模型在三阶段解剖学重建中的稀疏信息:初步研究

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Constructing anatomical shape from extremely sparse information is a challenging task. A priori information is often required to handle this otherwise ill-posed problem. In the present paper, we try to solve the problem in an accurate and robust way. At the heart of our approach lies the combination of a three-stage anatomical shape reconstruction technique and a dense surface point distribution model (DS-PDM). The DS-PDM is constructed from an already-aligned sparse training shape set using Loop subdivision. Its application facilitates the setup of point correspondences for all three stages of surface reconstruction due to its dense description. The proposed approach is especially useful for accurate and stable surface reconstruction from sparse information when only a small number of a priori training shapes are available. It adapts gradually to use more information derived from the a priori model when larger number of training data are available. The proposed approach has been successfully validated in a preliminary study on anatomical shape reconstruction of two femoral heads using only dozens of sparse points, yielding promising results.
机译:从极度稀疏信息构造解剖形状是一个具有挑战性的任务。经常需要先验信息来处理此否则不适的问题。在本文中,我们尝试以准确和强大的方式解决问题。在我们的方法的核心上,三级解剖结构重建技术和致密表面点分布模型(DS-PDM)的组合。 DS-PDM由使用环形细分设置的已经对齐的稀疏训练形状构成。由于其密集描述,其应用促进了对表面重建的所有三个阶段的点对应关系的设置。当只有少量的先验训练形状时,所提出的方法对于从稀疏信息的准确和稳定的表面重建特别有用。它逐渐适应使用从先验模型的更多信息,当有更多数量的训练数据时,它可以使用更大数量的培训数据。拟议的方法已成功验证,在初步研究中,在仅使用几十个稀疏点的两个股头的解剖结构重建的初步研究中,产生了有希望的结果。

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