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Hybrid parallelization of a seeded region growing segmentation of brain images for a GPU cluster

机译:GPU集群的脑区域图像的种子区域增长分割的混合并行化

摘要

The introduction of novel imaging technologies always carries new challenges regarding the processing of the captured images. Polarized Light Imaging (PLI) is such a new technique. It enables the mapping of single nerve fibers in postmortem human brains in unprecedented detail. Due to the very high resolution at sub-millimeter scale, an immense amount of image data has to be reconstructed three-dimensionally before it can be analyzed. Some of the steps in the reconstruction pipeline require a previous segmentation of the large images. This task of image processing creates black-and-white masks indicating the object and background pixels of the original images. It has turned out that a seeded region growing approach achieves segmentation masks of the desired quality. To be able to process the immense number of images acquired with PLI, the region growing has to be parallelized for a supercomputer. However, the choice of the seeds has to be automated in order to enable a parallel execution. A hybrid parallelization has been applied to the automated seeded region growing to exploit the architecture of a GPU cluster. The hybridity consists of an MPI parallelization and the execution of some well-chosen, data-parallel subtasks on GPUs. This approach achieves a linear speedup behavior so that the runtime can be reduced to a reasonable amount.
机译:新颖的成像技术的引入总是对捕获图像的处理提出新的挑战。偏振光成像(PLI)是一种新技术。它使人们能够以前所未有的详细程度映射死后人类大脑中的单个神经纤维。由于亚毫米尺度上的高分辨率,必须对三维图像数据进行三维重建,然后才能对其进行分析。重建管线中的某些步骤需要对大图像进行先前的分割。图像处理的此任务将创建黑白遮罩,以指示原始图像的对象和背景像素。事实证明,种子区域生长方法可实现所需质量的分割蒙版。为了能够处理用PLI采集的大量图像,对于超级计算机,必须使区域增长并行化。但是,必须自动选择种子,以实现并行执行。混合并行化已应用于自动播种区域,以利用GPU群集的体系结构。混合性包括MPI并行化和在GPU上执行一些精心选择的数据并行子任务。这种方法实现了线性加速行为,因此可以将运行时间减少到合理的水平。

著录项

  • 作者

    Westhoff Anna;

  • 作者单位
  • 年度 2014
  • 总页数
  • 原文格式 PDF
  • 正文语种 eng
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