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Quantifying Registration Uncertainty With Sparse Bayesian Modelling

机译:使用稀疏贝叶斯模型量化注册不确定性

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We investigate uncertainty quantification under a sparse Bayesian model of medical image registration. Bayesian modelling has proven powerful to automate the tuning of registration hyperparameters, such as the trade-off between the data and regularization functionals. Sparsity-inducing priors have recently been used to render the parametrization itself adaptive and data-driven. The sparse prior on transformation parameters effectively favors the use of coarse basis functions to capture the global trends in the visible motion while finer, highly localized bases are introduced only in the presence of coherent image information and motion. In earlier work, approximate inference under the sparse Bayesian model was tackled in an efficient Variational Bayes (VB) framework. In this paper we are interested in the theoretical and empirical quality of uncertainty estimates derived under this approximate scheme vs. under the exact model. We implement an (asymptotically) exact inference scheme based on reversible jump Markov Chain Monte Carlo (MCMC) sampling to characterize the posterior distribution of the transformation and compare the predictions of the VB and MCMC based methods. The true posterior distribution under the sparse Bayesian model is found to be meaningful: orders of magnitude for the estimated uncertainty are quantitatively reasonable, the uncertainty is higher in textureless regions and lower in the direction of strong intensity gradients.
机译:我们研究医学图像配准的稀疏贝叶斯模型下的不确定性量化。事实证明,贝叶斯建模功能强大,可以自动执行配准超参数的调整,例如数据和正则化功能之间的权衡。最近已使用稀疏诱导先验来使参数化本身具有适应性并由数据驱动。稀疏的先验变换参数有效地支持使用粗糙基函数来捕获可见运动中的全局趋势,而只有在存在连贯的图像信息和运动的情况下才引入更精细,高度局部化的基础。在较早的工作中,在有效的变分贝叶斯(VB)框架中解决了稀疏贝叶斯模型下的近似推断。在本文中,我们对这种近似方案与精确模型下得出的不确定性估计的理论和经验质量感兴趣。我们基于可逆跳跃马尔可夫链蒙特卡洛(MCMC)采样实现(渐近)精确推断方案,以表征变换的后验分布,并比较基于VB和MCMC的方法的预测。发现稀疏贝叶斯模型下的真实后验分布是有意义的:估计不确定性的数量级在数量上是合理的,无纹理区域的不确定性较高,而在强强度梯度的方向上较低。

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