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Impact of platform heterogeneity on the design of parallel algorithms for morphological processing of high-dimensional image data

机译:平台异质性对并行处理高维图像数据形态学算法设计的影响

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The main objective of this paper is to describe a realistic framework to understand parallel performance of high-dimensional image processing algorithms in the context of heterogeneous networks of workstations (NOWs). As a case study, this paper explores techniques for mapping hyperspectral image analysis techniques onto fully heterogeneous NOWs. Hyperspectral imaging is a new technique in remote sensing that has gained tremendous popularity in many research areas, including satellite imaging and aerial reconnaissance. The automation of techniques able to transform massive amounts of hyperspectral data into scientific understanding in valid response times is critical for space-based Earth science and planetary exploration. Using an evaluation strategy which is based on comparing the efficiency achieved by an heterogeneous algorithm on a fully heterogeneous NOW with that evidenced by its homogeneous version on a homogeneous NOW with the same aggregate performance as the heterogeneous one, we develop a detailed analysis of parallel algorithms that integrate the spatial and spectral information in the image data through mathematical morphology concepts. For comparative purposes, performance data for the tested algorithms on Thunderhead (a large-scale Beowulf cluster at NASA's Goddard Space Flight Center) are also provided. Our detailed investigation of the parallel properties of the proposed morphological algorithms provides several intriguing findings that may help image analysts in selection of parallel techniques and strategies for specific applications.
机译:本文的主要目的是描述一个现实的框架,以理解工作站异构网络(NOW)上下文中高维图像处理算法的并行性能。作为案例研究,本文探索了将高光谱图像分析技术映射到完全异构的NOW的技术。高光谱成像是遥感技术中的一项新技术,在许多研究领域都获得了极大的普及,包括卫星成像和空中侦察。能够在有效响应时间内将大量高光谱数据转化为科学理解的技术的自动化对于空基地球科学和行星探索至关重要。使用一种评估策略,该策略基于将完全异构的NOW上的异构算法所实现的效率与完全异构的NOW上具有均质性能的同类版本所证明的效率进行比较,我们对并行算法进行了详细的分析通过数学形态学概念将空间和光谱信息整合到图像数据中。为了进行比较,还提供了Thunderhead(NASA戈达德太空飞行中心的一个大型Beowulf集群)上经过测试的算法的性能数据。我们对提出的形态学算法的并行属性的详细研究提供了一些有趣的发现,这些发现可能会帮助图像分析人员选择针对特定应用的并行技术和策略。

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