利用高性能计算加速三维医学图像分割

P. Lenkiewicz, M. Pereira, M. Freire, J. Fernandes
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引用次数: 4

摘要

在过去的几年里,医学图像的数字处理已经帮助了医生和病人,因为它允许在非常精确的水平上进行检查和诊断。如今,它可以为现代医疗保健提供的最大支持可能是使用高性能计算架构来处理现代采集设备可以收集的大量数据。本文提出了一种图像分割算法的并行处理实现,该算法在配备10个处理单元的计算机集群上运行。由于工作负载的良好组织分布,我们设法大大缩短了所开发算法的执行时间,并达到了非常接近线性的性能增益。
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Accelerating 3D Medical Image Segmentation with High Performance Computing
Digital processing of medical images has helped physicians and patients during past years by allowing examination and diagnosis on a very precise level. Nowadays possibly the biggest deal of support it can offer for modern healthcare is the use of high performance computing architectures to treat the huge amounts of data that can be collected by modern acquisition devices. This paper presents a parallel processing implementation of an image segmentation algorithm that operates on a computer cluster equipped with 10 processing units. Thanks to well-organized distribution of the workload we manage to significantly shorten the execution time of the developed algorithm and reach a performance gain very close to linear.
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