Lin Wei, Song Hee Kwon
Department of Radiology, University of Pennsylvania Medical Center, Philadelphia, PA 19104, USA.
Magn Reson Imaging. 2006 Jul;24(6):751-60. doi: 10.1016/j.mri.2006.02.003. Epub 2006 May 23.
Autofocusing is a postprocessing technique for motion correction, which optimizes an image quality metric against various trial motions. In this work, image metric maps, which are measures of image quality plotted as a function of in-plane 2-D trial translations, are systematically studied to develop improved autofocusing motion correction algorithms. It is shown that determining object motion with autofocusing is equivalent to an image metric map optimization problem. These maps provide insights into the motion compensation process and help improve several aspects of the correction algorithm, including the selection of the image metric and motion search strategy. A highly efficient and robust 2-D global optimization method is devised, exploiting the properties of the metric map pattern. The improved algorithm is used to correct phantom and clinical MR images with in-plane 2-D translational motion and is shown to be more effective than existing methods.
自动聚焦是一种用于运动校正的后处理技术,它针对各种试验性运动优化图像质量指标。在这项工作中,系统地研究了图像指标图,即作为平面内二维试验平移函数绘制的图像质量测量值,以开发改进的自动聚焦运动校正算法。结果表明,利用自动聚焦确定物体运动等同于图像指标图优化问题。这些图为运动补偿过程提供了见解,并有助于改进校正算法的几个方面,包括图像指标的选择和运动搜索策略。利用指标图模式的特性设计了一种高效且鲁棒的二维全局优化方法。改进后的算法用于校正具有平面内二维平移运动的体模和临床磁共振图像,结果表明其比现有方法更有效。