Acceleration of Two Point Correlation Function Calculation for Pathology Image Segmentation.

Lee A D Cooper, Joel H Saltz, Umit Catalyurek, Kun Huang
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引用次数: 2

Abstract

The segmentation of tissue regions in high-resolution microscopy is a challenging problem due to both the size and appearance of digitized pathology sections. The two point correlation function (TPCF) has proved to be an effective feature to address the textural appearance of tissues. However the calculation of the TPCF functions is computationally burdensome and often intractable in the gigapixel images produced by slide scanning devices for pathology application. In this paper we present several approaches for accelerating deterministic calculation of point correlation functions using theory to reduce computation, parallelization on distributed systems, and parallelization on graphics processors. Previously we show that the correlation updating method of calculation offers an 8-35x speedup over frequency domain methods and decouples efficient computation from the select scales of Fourier methods. In this paper, using distributed computation on 64 compute nodes provides a further 42x speedup. Finally, parallelization on graphics processors (GPU) results in an additional 11-16x speedup using an implementation capable of running on a single desktop machine.
用于病理学图像分割的两点相关函数计算的加速。
由于数字化病理切片的大小和外观,高分辨率显微镜中组织区域的分割是一个具有挑战性的问题。两点相关函数(TPCF)已被证明是处理组织纹理外观的有效特征。然而,TPCF函数的计算在计算上是繁重的,并且在由用于病理学应用的载玻片扫描设备产生的千兆像素图像中常常是难以处理的。在本文中,我们提出了几种加速点相关函数确定性计算的方法,这些方法使用理论来减少计算,在分布式系统上并行化,以及在图形处理器上并行化。之前我们已经证明,相关更新计算方法在频域方法上提供了8-35倍的加速,并将有效计算与傅立叶方法的选择尺度解耦。在本文中,在64个计算节点上使用分布式计算可以进一步提高42倍的速度。最后,使用能够在单个台式机上运行的实现,在图形处理器(GPU)上的并行化会导致额外的11-16倍的加速。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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