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A FRAMEWORK FOR UNCERTAINTY AND VALIDATION OF 3-D REGISTRATION METHODS BASED ON POINTS AND FRAMES

机译:基于点和框架的3D配准方法不确定性和验证框架

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摘要

In this paper, we propose and analyze several methods to estimate a rigid transformation from a set of 3-D matched points or matched frames, which are important features in geometric algorithms. We also develop tools to predict and verify the accuracy of these estimations. The theoretical contributions are: an intrinsic model of noise for transformations based on composition rather than addition; a unified formalism for the estimation of both the rigid transformation and its covariance matrix for points or frames correspondences, and a statistical validation method to verify the error estimation, which applies even when no ''ground truth'' is available. We analyze and demonstrate on synthetic data that our scheme is well behaved. The practical contribution of the paper is the validation of our transformation estimation method in the case of 3-D medical images, which shows that an accuracy of the registration far below the size of a voxel can be achieved, and in the case of protein substructure matching, where frame features drastically improve both selectivity and complexity. [References: 51]
机译:在本文中,我们提出并分析了几种从一组3D匹配点或匹配帧中估计刚性变换的方法,这是几何算法中的重要特征。我们还开发了预测和验证这些估计准确性的工具。理论贡献是:基于成分而不是加法进行变换的噪声固有模型;一个统一的形式主义,用于估计刚性变换及其点或框架对应关系的协方差矩阵,以及一种统计验证方法来验证误差估计,即使没有“地面真理”也适用。我们对综合数据进行分析并证明,我们的方案表现良好。本文的实际贡献是在3-D医学图像的情况下验证了我们的变换估计方法,这表明在蛋白质亚结构的情况下,可以实现远远低于体素大小的配准精度匹配,其中框架特征可大大提高选择性和复杂性。 [参考:51]

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