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首页> 外文期刊>Optik: Zeitschrift fur Licht- und Elektronenoptik: = Journal for Light-and Electronoptic >Research on parallel unsupervised classification performance of remote sensing image based on MPI
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Research on parallel unsupervised classification performance of remote sensing image based on MPI

机译:基于MPI的遥感影像并行无监督分类性能研究

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摘要

The rapid processing of mass remote sensing data put challenges on computer's processing capability. Through parallel programming environment based on message passing, parallel K-means unsupervised classification of remote sensing image with different sizes we performed in parallel environment with different computers number. The speedup and efficiency of parallel computation as well as effect of message communication on parallel unsupervised classification were analyzed. The results show that the classification speed of mass amount data parallel remote sensing image unsupervised classification has been greatly improved and the parallel unsupervised classification has effect on parallel efficiency. In the parallel programming, message communication should be minimized as possible and messages should be merged to improve computation efficiency. Rational task allocation and communication can improve performance of parallel computing.
机译:海量遥感数据的快速处理对计算机的处理能力提出了挑战。通过基于消息传递的并行编程环境,我们在不同计算机数量的并行环境中对不同大小的遥感图像进行了并行K均值无监督分类。分析了并行计算的速度和效率,以及消息通信对并行无监督分类的影响。结果表明,海量数据并行遥感影像无监督分类的分类速度有了很大提高,并行无监督分类对并行效率有影响。在并行编程中,应尽可能减少消息通信,并应合并消息以提高计算效率。合理的任务分配和通信可以提高并行计算的性能。

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