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基于GPU的快速三维医学图像刚性配准技术*
引用本文:秦安,徐建,冯前进,孟晓林,陈武凡.基于GPU的快速三维医学图像刚性配准技术*[J].计算机应用研究,2010,27(3):1198-1200.
作者姓名:秦安  徐建  冯前进  孟晓林  陈武凡
作者单位:南方医科大学,广东省医学图像处理重点实验室,广州,510515
基金项目:国家自然科学基金资助项目(30730036);广东省产学研资助项目(cgzhzd0714)
摘    要:自动三维配准将多个图像数据映射到同一坐标系中,在医学影像分析中有广泛的应用。但现有主流三维刚性配准算法(如FLIRT)速度较慢,2563大小数据的刚性配准需要300 s左右,不能满足快速临床应用的需求。为此提出了一种基于CUDA(compute unified device architecture)架构的快速三维配准技术,利用GPU(gra-phic processing unit)并行计算实现配准中的坐标变换、线性插值和相似性测度计算。临床三维医学图像上的实验表明,该技术在保持配准精度的前提下将速度提

关 键 词:三维图像刚性配准  统一计算设备架构  三维医学图像  GPU

Fast 3D rigid medical image registration based on GPU
QIN An,XU Jian,FENG Qian-jin,MENG Xiao-lin,CHEN Wu-fan.Fast 3D rigid medical image registration based on GPU[J].Application Research of Computers,2010,27(3):1198-1200.
Authors:QIN An  XU Jian  FENG Qian-jin  MENG Xiao-lin  CHEN Wu-fan
Affiliation:(Key Laboratory for Medical Image Processing of Guangdong Province, Southern Medical University, Guangzhou 510515, China)
Abstract:Automatic 3D image rigid registration technique, which maps multiple images into a common coordinate space, is an important clinical image analysis tool. The state of art rigid registration techniques like FLIRT take 300s to complete a rigid registration for a 2563 data set.This makes it hard to apply this technique in time critical clinical environment.This paper proposed a parallel accelerating registration algorithm based on the new CUDA.By using the GPU to compute the coordinate transformation, interpolation and similarity metric computation, great improvement of speed has been achieved without compromising the registration accuracy. The proposed technique is valuable for time critical clinical application.
Keywords:3D medical image registration  CUDA  3D medical image  GPU
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