Parallelization of Low-Level Computer Vision Algorithms on Clusters

S. Kadam
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引用次数: 4

Abstract

In this paper we present parallel implementations of some representative low level vision algorithms on a cluster of workstations. These include convolution operation and the image restoration algorithm using Markov random field models. The convolution operation has been parallelized using the Farmer-Worker paradigm, while the image restoration algorithm has been parallelized through the Master-Worker pattern. Parallel implementations of both these algorithms have shown promising results, where the observed speedups are reasonably close to the ideal speedups. The parallel convolution operation has shown good scalability with respect to the problem size and number of processors used in parallelization. The paper elaborates on different parallelization results of the convolution operation observed after varying the image size, mask size and processor load on individual workstations. The image restoration algorithm is communication intensive. However, as the computing time between successive communications at each worker process is relatively high, the actual speedups observed are very close to the ideal speedups in this algorithm.
基于聚类的低层次计算机视觉算法并行化
在本文中,我们提出了一些有代表性的低级视觉算法在一个工作站集群上的并行实现。其中包括卷积运算和使用马尔可夫随机场模型的图像恢复算法。卷积操作已经使用农工模式并行化,而图像恢复算法已经通过主工模式并行化。这两种算法的并行实现已经显示出有希望的结果,其中观察到的加速相当接近理想的加速。并行卷积运算在问题大小和并行化使用的处理器数量方面显示出良好的可扩展性。本文详细阐述了在不同的工作站上,不同的图像大小、掩码大小和处理器负载所观察到的卷积运算的不同并行化结果。图像恢复算法是通信密集型的。然而,由于每个工作进程的连续通信之间的计算时间相对较高,因此观察到的实际加速非常接近该算法中的理想加速。
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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