基于拉普拉斯卷积滤波算法的GPGPU超线性加速研究

Mogana Vadiveloo, Mishal Almazrooie, R. Abdullah
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摘要

本文的主要思想是研究当通用图形处理单元(GPGPU)上的并发线程承载繁重工作负载时出现超线性加速的假设。为了验证这一假设,本文以卷积滤波拉普拉斯图像边缘检测算法为例进行了研究。在本工作中,利用GPGPU的局部存储器来实现超线性加速。在这些局部存储器中调用拉普拉斯边缘检测算法的卷积滤波核。通过这种方式,GPGPGU本地内存的低延迟得到了有效的部署,并随后导致更高的加速。结果表明,当卷积核的大小较大时,可以实现超线性加速。在本研究中,当卷积核大小为7×7时,对于1KB-2500KB之间的图像数据集,可以观察到超线性加速。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Superlinear Speedup on GPGPU Using Laplacian Algorithm with Convolution Filtering as A Case Study
In this paper, the main idea is to investigate the hypothesis that superlinear speedup occurs when the concurrent threads on General Purposes Graphic Processing Units (GPGPU) carry heavy workloads. In order to evaluate this hypothesis, Laplacian image edge detection algorithm with convolution filtering is chosen as a case study. In this work, local memories of GPGPU are utilized in order to achieve the superlinear speedup. The convolution filtering kernels of the Laplacian edge detection algorithm are invoked in these local memories. By this, the low latency of the GPGPGU local memory are deployed efficiently and this subsequently leads to a higher speedup. The results obtained presented that the superlinear speedup is achieved when the size of the convolution kernel is large. In this study, when the convolution kernel size is 7×7, superlinear speedup is observed for image dataset of sizes between 1KB-2500KB.
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