A new algorithm is developed to jointly recover a temporal sequence of images from noisy and under-sampled Fourier data. Specifically, we consider the case where each data set is missing vital information that prevents its (individual) accurate recovery. Our new method is designed to restore the missing information in each individual image by "borrowing" it from the other images in the sequence. As a result, {\em all} of the individual reconstructions yield improved accuracy. The use of high resolution Fourier edge detection methods is essential to our algorithm. In particular, edge information is obtained directly from the Fourier data which leads to an accurate coupling term between data sets. Moreover, data loss is largely avoided as coarse reconstructions are not required to process inter- and intra-image information. Numerical examples are provided to demonstrate the accuracy, efficiency and robustness of our new method.
翻译:开发了一种新的算法, 共同从噪音大和抽样少的Fourier数据中恢复图像的时间序列。 具体地说, 我们考虑的是每个数据集缺少重要信息从而阻碍其( 个人) 准确恢复的关键信息的情况。 我们的新方法旨在通过“ 借用” 来恢复每个单个图像中的缺失信息。 结果, 单项重建的准确性提高了 。 使用高分辨率 Fourier 边缘探测方法对我们的算法至关重要 。 特别是, 直接从 Fourier 数据中获取边际信息, 从而导致数据集之间准确的连接术语 。 此外, 数据丢失在很大程度上是避免的, 因为处理图像间和内部信息不需要粗糙的重建。 提供了数字示例, 以证明我们新方法的准确性、 效率和稳健性 。