Woods R P, Grafton S T, Holmes C J, Cherry S R, Mazziotta J C
Division of Brain Mapping, UCLA School of Medicine, USA.
J Comput Assist Tomogr. 1998 Jan-Feb;22(1):139-52. doi: 10.1097/00004728-199801000-00027.
We sought to describe and validate an automated image registration method (AIR 3.0) based on matching of voxel intensities.
Different cost functions, different minimization methods, and various sampling, smoothing, and editing strategies were compared. Internal consistency measures were used to place limits on registration accuracy for MRI data, and absolute accuracy was measured using a brain phantom for PET data.
All strategies were consistent with subvoxel accuracy for intrasubject, intramodality registration. Estimated accuracy of registration of structural MRI images was in the 75 to 150 microns range. Sparse data sampling strategies reduced registration times to minutes with only modest loss of accuracy.
The registration algorithm described is a robust and flexible tool that can be used to address a variety of image registration problems. Registration strategies can be tailored to meet different needs by optimizing tradeoffs between speed and accuracy.
我们试图描述并验证一种基于体素强度匹配的自动图像配准方法(AIR 3.0)。
比较了不同的代价函数、不同的最小化方法以及各种采样、平滑和编辑策略。使用内部一致性测量来限制MRI数据的配准精度,并使用脑模体测量PET数据的绝对精度。
所有策略在受试者内、模态内配准方面均与亚体素精度一致。结构MRI图像的估计配准精度在75至150微米范围内。稀疏数据采样策略将配准时间缩短至几分钟,而精度仅有适度损失。
所描述的配准算法是一种强大且灵活的工具,可用于解决各种图像配准问题。通过优化速度和精度之间的权衡,可以定制配准策略以满足不同需求。