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High-performance medical image registration using new optimization techniques

机译:使用新的优化技术进行高性能医学图像配准

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Optimization of a similarity metric is an essential component in intensity-based medical image registration. The increasing availability of parallel computers makes parallelizing some registration tasks an attractive option to increase speed. In this paper, two new deterministic, derivative-free, and intrinsically parallel optimization methods are adapted for image registration. DIviding RECTangles (DIRECT) is a global technique for linearly bounded problems, and multidirectional search (MDS) is a recent local method. The performance of DIRECT, MDS, and hybrid methods using a parallel implementation of Powell's method for local refinement, are compared. Experimental results demonstrate that DIRECT and MDS are robust, accurate, and substantially reduce computation time in parallel implementations.
机译:相似性度量的优化是基于强度的医学图像配准的重要组成部分。并行计算机可用性的提高使得并行执行某些注册任务成为提高速度的有吸引力的选择。在本文中,两种新的确定性,无导数和本质上并行的优化方法适用于图像配准。分割RECTangles(DIRECT)是解决线性有界问题的一种全局技术,而多方向搜索(MDS)是最近的一种局部方法。比较了使用Powell方法的并行实现进行局部优化的DIRECT,MDS和混合方法的性能。实验结果表明,DIRECT和MDS健壮,准确,并且在并行实现中大大减少了计算时间。

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