Netsch Thomas, van Muiswinkel Arianne
Philips Research Laboratories, Röntgenstrasse 24-26, D-22335 Hamburg, Germany.
IEEE Trans Med Imaging. 2004 Jul;23(7):789-98. doi: 10.1109/TMI.2004.827479.
A statistical method for the evaluation of image registration for a series of images based on the assessment of consistency properties of the registration results is proposed. Consistency is defined as the residual error of the composition of cyclic registrations. By combining the transformations of different algorithms the consistency error allows a quantitative comparison without the use of ground truth, specifically, it allows a determination as to whether the algorithms are compatible and hence provide comparable registrations. Consistency testing is applied to evaluate retrospective correction of eddy current-induced image distortion in diffusion tensor imaging of the brain. In the literature several image transformations and similarity measures have been proposed, generally showing a significant reduction of distortion in side-by-side comparison of parametric maps before and after registration. Transformations derived from imaging physics and a three-dimensional affine transformation as well as mutual information (MI) and local correlation (LC) similarity are compared to each other by means of consistency testing. The dedicated transformations could not demonstrate a significant difference for more than half of the series considered. LC similarity is well-suited for distortion correction providing more consistent registrations which are comparable to MI.
提出了一种基于评估配准结果一致性属性来评估一系列图像配准的统计方法。一致性被定义为循环配准组合的残余误差。通过组合不同算法的变换,一致性误差允许在不使用地面真值的情况下进行定量比较,具体而言,它允许确定算法是否兼容,从而提供可比的配准。一致性测试用于评估脑扩散张量成像中涡流引起的图像失真的回顾性校正。文献中提出了几种图像变换和相似性度量,在配准前后参数图的并排比较中,通常显示失真显著降低。通过一致性测试相互比较了源自成像物理的变换、三维仿射变换以及互信息(MI)和局部相关性(LC)相似性。在所考虑的系列中,超过一半的情况专用变换未能显示出显著差异。LC相似性非常适合失真校正,可提供与MI相当的更一致的配准。