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面向剖分面片模板的遥感影像并行处理方法
引用本文:杜根远,张火林,苗放.面向剖分面片模板的遥感影像并行处理方法[J].计算机应用研究,2016,33(8).
作者姓名:杜根远  张火林  苗放
作者单位:许昌学院 信息工程学院,许昌学院 信息工程学院,成都理工大学 地球物理学院
基金项目:国家自然科学-基于剖分模型的遥感影像模板并行处理方法研究(U1304403);河南省科技攻关计划-Hadoop下剖分遥感影像并行处理平台设计与开发(132102210398);河南省基础与前沿技术研究计划-云环境下海量遥感影像数据存储机理研究(132300410349).
摘    要:空间数据特别是遥感影像数据的快速增加和应用需求的扩大,其组织效率和处理速度已经成为制约技术应用的瓶颈,地球剖分理论和高性能计算为上述问题解决提供了一种可能途径。针对上述问题,在遥感影像剖分面片数据模型的研究基础上,提出了剖分面片模板并行计算模式,设计并实现了一种面向剖分面片模板的遥感影像并行处理方法;该方法基于MPI(Message Passing Interface)与OpenMP(Open Multi-Processing)混合并行计算框架,构建算法并行处理模型,形成算法并行化类库,通过调用其内部方法实现计算任务的并行执行。通过一个遥感影像剖分化并行分割处理实例,验证了该方法的有效性。实验结果表明,该方法具有较好的分割效果和加速比,有一定的示范意义,为进一步提高遥感影像应用能力提供了借鉴。

关 键 词:遥感影像  地球剖分理论  剖分面片模板  计算模式  并行处理模型  影像分割
收稿时间:2015/4/13 0:00:00
修稿时间:2016/6/20 0:00:00

Research on remote sensing image parallel processing method for partition facet template
Du Genyuan,Zhang Huolin and Miao Fang.Research on remote sensing image parallel processing method for partition facet template[J].Application Research of Computers,2016,33(8).
Authors:Du Genyuan  Zhang Huolin and Miao Fang
Affiliation:International School of Education,Xuchang University,International School of Education,Xuchang University,College of Geophysics,Chengdu University of Technology
Abstract:Alongside with the rapid increase of spatial data, especially remote sensing data and the growing application demands, spatial data organizational efficiency and processing speed have already become the bottleneck hindering its application. At present, the earth partition theory and high performance computing technology provide a possible approach for solving the above problems. In response to these problems, the researchers of this paper put forward a new parallel computing pattern which is based on the remote sensing image data model of partition facets template. The theoretical basis of the new pattern includes the earth partition model and the parallel computing theory. Guided by the hybrid parallel computing framework of MPI and OpenMP, the researchers discover the parallel algorithm library and adjust the internal application method so as to realize parallel implementation of computing tasks. Meanwhile, the new computing method is based on the parallel computing model of remote sensing images. The details are described as follows. Firstly, in accord with the specific application needs, the researchers choose the appropriate remote sensing image and subdivide the image based on the EMD model, thus getting different levels partition facets. Secondly, the researchers extract the features of partition facets, generate the partition facets template, and build the database of partition templates. Thirdly, computing hotspot of the concrete processing algorithm is analyzed and the corresponding parallel processing model is implemented. At last, the researchers design the parallel class and form the class library of parallel processing algorithm of remote sensing image. On the whole, the new method can be easily applied, while users need not master the relevant parallel developing experience or knowledge about the subdivision organization mechanism of spatial data. By instantiating the specific parallel processing class, initializing the parameters, and calling the method interface of the specific parallel class, they are able to implement the paralleling process of remote sensing image. Besides, the effectiveness of the proposed method has been verified through a remote sensing image segmentation instance. The experiments demonstrate the segmentation result, while the running speed of the segmentation algorithm can be improved. The proposed method is of considerable practical significance and reference value for improving the processing ability of remote sensing image.
Keywords:Remote Sensing Image  Earth Partition Theory  Partition Facet Template  Computing Mode  Parallel Processing Model  Image Segmentation
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