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Robust group-wise rigid registration of point sets using t-mixture model

机译:强大的群体使用T-混合物模型的点组刚性登记

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A probabilistic framework for robust, group-wise rigid alignment of point-sets using a mixture of Students t-distributions is proposed. Rigid registration is challenging for groups of complex 3D shapes, especially when the point sets are of varying lengths, are corrupted by an unknown degree of outliers or in the presence of missing data. Medical images (in particular magnetic resonance (MR) images), their segmentations and consequently point-sets generated from these are highly susceptible to corruption by outliers. This poses a problem for robust correspondence estimation and accurate alignment of shapes, necessary for training statistical shape models (SSMs). To address these issues, this study proposes to use a t-mixture model (TMM), to approximate the underlying joint probability density of a group of similar shapes and align them to a common reference frame. The heavy-tailed nature of t-distributions provides a more robust registration framework in comparison to state of the art algorithms. Significant reduction in alignment errors is achieved in the presence of outliers, using the proposed TMM-based group-wise rigid registration method, in comparison to its Gaussian mixture model (GMM) counterparts. The proposed TMM-framework is compared with a group-wise variant of the well known Coherent Point Drift (CPD) algorithm and two other group-wise methods using GMMs, using both synthetic and real data sets. Rigid alignment errors for groups of shapes are quantified using the Hausdorff distance (HD) and quadratic surface distance (QSD) metrics.
机译:提出了一种用于稳健的概率框架,使用学生T分布的混合物的点组的概念刚性对准。刚性注册是对复杂3D形状组的具有挑战性,特别是当点集的长度变化时,通过未知程度的异常值或在缺失数据存在下损坏。医学图像(特别是磁共振(MR)图像),它们的分段和从这些产生的点集比由异常值腐败高度敏感。这对训练统计形状模型(SSM)所需的强大的对应估计和精确对准的鲁棒对应估计和精确对准。为了解决这些问题,本研究提出使用T-混合物模型(TMM),以近似于类似形状的基团的关节概率密度并将它们对准到公共参考框架。与现有技术的算法相比,T分布的重尾性质提供了更强大的注册框架。与其高斯混合模型(GMM)对应相比,在异常值的情况下,在异常值的存在下,在异常值的存在下实现了对准误差的显着降低。将所提出的TMM框架与众所周知的相干点漂移(CPD)算法的群体变体进行比较,并使用合成和实际数据集使用GMMS的另外两个其他组织方法。使用Hausdorff距离(HD)和二次表面距离(QSD)度量来量化形状组的刚性对准误差。

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