Recovering temporal image sequences (videos) based on indirect, noisy, or incomplete data is an essential yet challenging task. We specifically consider the case where each data set is missing vital information, which prevents the accurate recovery of the individual images. Although some recent (variational) methods have demonstrated high-resolution image recovery based on jointly recovering sequential images, there remain robustness issues due to parameter tuning and restrictions on the type of the sequential images. Here, we present a method based on hierarchical Bayesian learning for the joint recovery of sequential images that incorporates prior intra- and inter-image information. Our method restores the missing information in each image by "borrowing" it from the other images. As a result, \emph{all} of the individual reconstructions yield improved accuracy. Our method can be used for various data acquisitions and allows for uncertainty quantification. Some preliminary results indicate its potential use for sequential deblurring and magnetic resonance imaging.
翻译:根据间接、吵闹或不完整的数据回收时间图像序列(视频)是一项重要但具有挑战性的任务。我们特别考虑到每个数据集缺少重要信息的情况,这妨碍了个人图像的准确恢复。虽然最近的一些(变量)方法显示,在共同恢复相继图像的基础上恢复了高分辨率图像,但由于参数调整和限制顺序图像的类型,仍然存在着稳健性问题。在这里,我们提出了一个基于Bayesian等级级学习的方法,用于联合恢复包含先前图像内和图像间信息的连续图像。我们的方法通过从其他图像中“借用”恢复了每个图像中缺失的信息。结果,个人重建中的\emph{所有方法都提高了准确性。我们的方法可用于各种数据采集,并允许对不确定性进行量化。一些初步结果表明,它有可能用于按顺序分流和磁共振成像。