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A New Approach to Improve the Cluster-based Parallel Processing Efficiency of High-Resolution Remotely Sensed Image
Authors:Zhanfeng Shen  Jiancheng Luo  Wei Wu  Xiaodong Hu
Institution:1. Institute of Remote Sensing Applications, Chinese Academy of Sciences, Beijing, China, 100101
2. National Engineer Center for Geoinformatics(NCG), Institute of Remote Sensing Applications(IRSA), Chinese Academy of Sciences(CAS), Jia 11, Datun Road, Anwai, Beijing, 100101, People??s Republic of China
Abstract:Object-oriented remotely sensed images processing method has been accepted by more and more experts of remote sensing. To advance the efficiency of data processing, parallel image computing is a good choice since large volumes of data need be analyzed efficiently and rapidly. This paper presents the information extraction method based on per-parcel extraction of high-resolution remotely sensed image; to extract efficiently different information from remotely sensed image, this paper gives the research idea of image rough-classification based on large-scale and subtle-segmentation based on small-scale; to improve the efficiency of image processing, we adapt parallel computing method to solve this problem by presenting an new data-partition method. At last this paper gives the implementation of the research idea based on Message Passing Interface (MPI) and analyzes our experimental system efficiency, and the results show that the new methods can improve the efficiency of high-resolution remotely sensed image data processing efficiently and have a good application.
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