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Spatially Adaptive Temporal Smoothing for Reconstruction of Dynamic Image Sequences

机译:动态图像序列重建的空间自适应时间平滑

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摘要

In this paper, we propose a method for spatio-temporal reconstruction of dynamic image sequences. In a method we proposed previously, temporal smoothing in a Karhunen-Loegraveve (KL) or principal components (PC) transform domain was used prior to reconstruction to reduce the effect of noise. Unlike the Bayesian priors that are usually used in image reconstruction, temporal KL smoothing is a data-driven approach that takes advantage of the fact that the desired part of the data is characterized by strong interframe correlations, whereas the noise is uncorrelated. A potential disadvantage of KL-based methods is that they typically use a pooled estimate of the signal covariance matrix, thus assuming that all pixels obey similar time functions. In this paper, we investigate the possibility of making the temporal smoothing adapt spatially to local characteristics in the projection data. This can improve the noise performance of the temporal smoothing, while lessening the possibility of signal distortion. Computer simulation results are used to evaluate the technique for dynamic imaging applications in brain and tumor imaging
机译:在本文中,我们提出了一种动态图像序列的时空重建方法。在我们先前提出的方法中,在重建之前使用Karhunen-Loegraveve(KL)或主成分(PC)变换域中的时间平滑来减少噪声的影响。与通常在图像重建中使用的贝叶斯先验不同,时间KL平滑是一种数据驱动的方法,它利用了以下事实:数据的所需部分具有强大的帧间相关性,而噪声却不相关。基于KL的方法的潜在缺点是它们通常使用信号协方差矩阵的合并估计,因此假设所有像素都遵循相似的时间函数。在本文中,我们研究了使时间平滑在空间上适应投影数据中局部特征的可能性。这可以改善时间平滑的噪声性能,同时减少信号失真的可能性。计算机仿真结果用于评估动态成像技术在脑和肿瘤成像中的应用

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