A Universal Parallel Framework For Remote Sensing Process

Article Preview

Abstract:

Parallel computing technology has been widely used to process massive remote sensing data high efficiently. In order to simplify the development of remote sensing data parallel processing system and consider about the characteristics of remote sensing data pre-processing, this paper designs a cluster-based universal parallel processing framework. The framework encapsulates parallel job scheduling and management, adapts the strategy of components development, provides the simple interface for the users to develop new functionalities by adding new data-processing components into the framework. Basing on Message Passing Interface (MPI), the framework is implemented. Experiments, such as adding remote sensing data extracting, radiometric correction and geometric correction into the framework, show that the framework performed well in computing efficiency and speedup rate.

You might also be interested in these eBooks

Info:

Periodical:

Pages:

599-602

Citation:

Online since:

December 2012

Export:

Price:

Permissions CCC:

Permissions PLS:

Сopyright:

© 2013 Trans Tech Publications Ltd. All Rights Reserved

Share:

Citation:

[1] Shulong Zhu, Zhanmu Zhang, Capturing and Analysis of Remote Sensing Image, Science Press, Beijing, 2000. (In Chinese).

Google Scholar

[2] Hengzhen Gao: Research on Classification Technique for Hyperspectral Remtote Sensing Imagery (National University of Defense Technology, China 2011). (In Chinese).

Google Scholar

[3] Gill, S., Parallel Programming, J. The Computer Journal. 1 (1958)2-10.

Google Scholar

[4] J. Dorband, J. Palencia, U. Ranawake, Commodity computing clusters at Goddard Space Flight Center, J. Journal of Space Communication, 1(2003)15-21.

Google Scholar

[5] Haoyang Wu, Bingguo Chang, Changchun Zhu, et al, A Multigroup Parallel Genetic Algorithm Based on Simulated Annealing Method, J. Journal of Software, 11(2000)416-420. (In Chinese).

Google Scholar

[6] Wen Li, Yingwu Chen, Jufang Li, Approach to remotly sensed data processing task scheduling problem based on fast simulated annealing, J. System Engineering and Electronics, 33(2011) 334-338. (In Chinese).

DOI: 10.1109/pic.2010.5687964

Google Scholar

[7] Tianbing Tang, Lingyun Wei, Xianghong Xie, et al, Study on distributed parallel computing on hybrid genetic algorithm, J. Computer Engineering and Applications, 47(2011) 207-209. ( In Chinese).

Google Scholar