University of Valladolid, Valladolid.
IEEE Trans Pattern Anal Mach Intell. 2013 Nov;35(11):2638-50. doi: 10.1109/TPAMI.2013.74.
This paper proposes a methodology for the joint alignment of a sequence of images based on a groupwise registration procedure by using a new family of metrics that exploit the expected sparseness of the temporal intensity curves corresponding to the aligned points. Therefore, this methodology is able to tackle the alignment of temporal sequences of images in which the represented phenomenon varies in time. Specifically, we have applied it to the correction of motion in contrast-enhanced first-pass perfusion cardiac magnetic resonance images. The time sequence is elastically registered as a whole by using the aforementioned family of multi-image metrics and jointly optimizing the parameters of the transformations involved. The proposed metrics are able to cope with dynamic changes in the intensity content of corresponding points in the sequence guided by the assumption that these changes allow for a sparse representation in a properly selected frame. Results have shown the statistically significant improvement in the performance of the proposed metric with respect to previous groupwise registration metrics for the problem at hand, which is especially relevant to correct for elastic deformations.
本文提出了一种基于分组注册程序的图像序列联合配准方法,使用了一种新的度量标准族,该族利用了与对齐点相对应的时间强度曲线的预期稀疏性。因此,该方法能够解决表示时间变化现象的时间序列图像的配准问题。具体来说,我们已经将其应用于对比增强首过灌注心脏磁共振图像的运动校正。通过使用上述多图像度量标准族,对时间序列进行整体弹性配准,并联合优化所涉及变换的参数。所提出的度量标准能够在序列中对应点的强度内容发生动态变化的情况下进行处理,这是基于这些变化允许在适当选择的帧中进行稀疏表示的假设。结果表明,所提出的度量标准在解决当前问题的分组注册度量标准方面具有统计学意义上的性能提升,这对于纠正弹性变形尤为重要。