A recursive PVM implementation of an image segmentation algorithm with performance results comparing the HIVE and the Cray T3E

J. Tilton
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引用次数: 15

Abstract

A recursive PVM (Parallel Virtual Machine) implementation of a high quality but computationally intensive image segmentation approach is described and the performance of the algorithm on the HIVE and on the Cray T3E is contrasted. The image segmentation algorithm, which is designed for the analysis of multispectral or hyperspectral remotely sensed imagery data, is a hybrid of region growing and spectral clustering that produces a hierarchical set of image segmentations based on detected natural convergence points. The HIVE is a Beowulf-class parallel computer consisting of 66 Pentium Pro PCs (64 slaves and 2 controllers) with 2 processors per PC (for 128 total slave processors) which was developed and assembled by the Applied Information Sciences Branch at NASA's Goddard Space Flight Center. The Cray T3E is a supercomputer with 512 available processors, which is installed at the NASA Center for Computational Science at NASA's Goddard Space Flight Center. Timing results on Landsat Multispectral Scanner data show that the algorithm runs approximately 1.5 times faster on the HIVE, even though the HIVE is some 86 times less costly than the Cray T3E.
一种递归PVM实现的图像分割算法,性能结果比较HIVE和Cray T3E
描述了一种高质量但计算密集型图像分割方法的递归PVM(并行虚拟机)实现,并对比了该算法在HIVE和Cray T3E上的性能。图像分割算法是针对多光谱或高光谱遥感图像数据分析而设计的,它是一种混合区域增长和光谱聚类的算法,基于检测到的自然收敛点产生分层的图像分割集。HIVE是一个贝奥武夫级并行计算机,由66个奔腾Pro PC(64个从机和2个控制器)组成,每台PC有2个处理器(总共128个从机),由美国宇航局戈达德太空飞行中心的应用信息科学部门开发和组装。克雷T3E是一台拥有512个可用处理器的超级计算机,安装在美国宇航局戈达德太空飞行中心的美国宇航局计算科学中心。Landsat多光谱扫描仪数据的时序结果表明,该算法在HIVE上的运行速度约为1.5倍,尽管HIVE的成本比Cray T3E低约86倍。
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