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Efficient Gaussian Process-Based Modelling and Prediction of Image Time Series

机译:基于高斯过程的高效图像时间序列建模与预测

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摘要

In this work we propose a novel Gaussian process-based spatio-temporal model of time series of images. By assuming separability of spatial and temporal processes we provide a very efficient and robust formulation for the marginal likelihood computation and the posterior prediction. The model adaptively accounts for local spatial correlations of the data, and the covariance structure is effectively parameterised by the Kronecker product of covariance matrices of very small size, each encoding only a single direction in space. We provide a simple and flexible framework for within- and between-subject modelling and prediction. In particular, we introduce the Hoffman-Ribak method for efficient inference on posterior processes and its uncertainty. The proposed framework is applied in the context of longitudinal modelling in Alzheimer’s disease. We firstly demonstrate the advantage of our non-parametric method for modelling of within-subject structural changes.The results show that non-parametric methods demonstrably outperform conventional parametric methods. Then the framework is extended to optimize complex parametrized covariate kernels. Using Bayesian model comparison via marginal likelihood the framework enables to compare different hypotheses about individual change processes of images.
机译:在这项工作中,我们提出了一种新颖的基于高斯过程的图像时间序列的时空模型。通过假设空间和时间过程的可分性,我们为边际似然计算和后验预测提供了非常有效且健壮的公式。该模型自适应地考虑了数据的局部空间相关性,并且协方差结构可以通过非常小的尺寸的协方差矩阵的Kronecker乘积有效地参数化,每个协方差矩阵仅对空间中的单个方向进行编码。我们为对象内部和对象之间的建模和预测提供了一个简单而灵活的框架。特别是,我们引入了Hoffman-Ribak方法来有效推断后过程及其不确定性。拟议的框架适用于阿尔茨海默氏病的纵向建模。我们首先证明了使用非参数方法进行主题内部结构变化建模的优势,结果表明非参数方法明显优于常规参数方法。然后扩展框架以优化复杂的参数化协变量内核。通过边缘可能性使用贝叶斯模型比较,该框架能够比较关于图像的单个变化过程的不同假设。

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