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Exploiting Multi-Level Parallelism for Stitching Very Large Microscopy Images

机译:利用多级平行度拼接非常大的显微镜图像

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摘要

Due to the limited field of view of the microscopes, acquisitions of macroscopic specimens require many parallel image stacks to cover the whole volume of interest. Overlapping regions are introduced among stacks in order to make it possible automatic alignment by means of a 3D stitching tool. Since state-of-the-art microscopes coupled with chemical clearing procedures can generate 3D images whose size exceeds the Terabyte, parallelization is required to keep stitching time within acceptable limits. In the present paper we discuss how multi-level parallelization reduces the execution times of TeraStitcher, a tool designed to deal with very large images. Two algorithms performing dataset partition for efficient parallelization in a transparent way are presented together with experimental results proving the effectiveness of the approach that achieves a speedup close to 300×, when both coarse- and fine-grained parallelism are exploited. Multi-level parallelization of TeraStitcher led to a significant reduction of processing times with no changes in the user interface, and with no additional effort required for the maintenance of code.
机译:由于显微镜的视野有限,因此采集宏观标本需要许多平行的图像堆,以覆盖整个感兴趣的体积。为了在3D拼接工具中实现自动对齐,可以在堆栈之间引入重叠区域。由于最先进的显微镜结合化学清除程序可以生成尺寸超过TB的3D图像,因此需要并行化才能将缝合时间保持在可接受的范围内。在本文中,我们讨论了多级并行处理如何减少TeraStitcher(一种用于处理非常大的图像的工具)的执行时间。提出了两种以透明方式进行数据集划分以实现高效并行化的算法,并结合实验结果证明了该方法在利用粗粒度和细粒度并行性时均能达到近300倍的加速效果。 TeraStitcher的多级并行化显着减少了处理时间,而无需更改用户界面,也无需付出额外的精力来维护代码。

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