Browse > Article
http://dx.doi.org/10.11108/kagis.2013.16.4.141

Testing Implementation of Remote Sensing Image Analysis Processing Service on OpenStack of Open Source Cloud Platform  

Kang, Sang-Goo (Dept. of Information System Engineering, Hansung University)
Lee, Ki-Won (Dept. of Information System Engineering, Hansung University)
Publication Information
Journal of the Korean Association of Geographic Information Studies / v.16, no.4, 2013 , pp. 141-152 More about this Journal
Abstract
The applications and concerned technologies of cloud computing services, one of major trends in the information communication technology, are widely progressing and advancing. OpenStack, one of open source cloud computing platforms, is comprised of several service components; using these, it can be possible to build public or private cloud computing service for a given target application. In this study, a remote sensing image analysis processing service on cloud computing environment has designed and implemented as an operational test application in the private cloud computing environment based on OpenStack. The implemented service is divided into instance server, web service, and mobile app. A instance server provides remote sensing image processing and database functions, and the web service works for storage and management of remote sensing image from user sides. The mobile app provides functions for remote sensing images visualization and some requests.
Keywords
OpenStack; Cloud Computing; Mobile App; Open Source; Remote Sensing Image;
Citations & Related Records
Times Cited By KSCI : 2  (Citation Analysis)
연도 인용수 순위
1 Almeer, M.H. 2012. Cloud hadoop map reduce for remote sensing image analysis. Journal of Emerging Trends in Computing and Information Sciences 3:637-644.
2 Barnatt, C. (Yoon, S.H. and K.H. Lee translation) 2011. A Brief Guide to Cloud Computing. Miraebook, 312pp (크리스토퍼 버냇 (윤성호, 이경환 옮김). 2011. 클라우드 컴퓨팅 당신이 알고 있는 컴퓨터의 시대는 끝났다. 미래의창, 312쪽).
3 Jeong, U.J., D.J. Kang and S.I. Jung. 2011. Trend of open source sw-based cloud computing technology. Electronics and Telecommunications Trends 26(5):43-54 (정의정, 강동재, 정성인. 2011. 공개 SW기반 클라우드 기술 현황, 전자통신동향분석 26(5):43-54).
4 Kang, S.G., K.W. Lee and Y.S. Kim. 2012. Preliminary performance testing of geo-spatial image parallel processing in the mobile cloud computing service. Korean Journal of Remote Sensing 28(4):467-475 (강상구, 이기원, 김용승. 2012. 모바일 클라우드 컴퓨팅 서비스를 위한 위성영상 병렬 정보처리 성능 예비실험. 대한원격탐사학회지 28(4):467-475).   과학기술학회마을   DOI   ScienceOn
5 Kim, K.S. and K.W. Lee. 2012. Overlay rendering of multiple geo-based images using WebGL blending technique. Journal of the Korean Association of Geographic Information Studies 15(4):104-113 (김광섭, 이기원. 2012. WebGL 블렌딩 기법을 이용한 다중 공간영상정보 중첩 가시화. 한국지리정보학회지 15(4):104-113).   과학기술학회마을   DOI   ScienceOn
6 Kim, K.S., S.G. Kang and K.W. Lee. 2013. Geo-based image blending in a mobile cloud environment. Remote Sensing Letters 4(11):1117-1126.   DOI   ScienceOn
7 Lance A. 2012. Comparing open source private cloud (IaaS) platforms. http://cdn.oreillystatic.com/en/assets/1/event/80/Comparing Open Source PrivateCloud Platforms Presentation.pdf.
8 Lee, K.W. and S.G. Kang. 2013. Mobile cloud service of geo-based image processing functions: a test iPad implementation. Remote Sensing Letters 4(9):910-919. http://www.tandfonline. com/doi/abs/10.1080/2150704X.2013.810821.   DOI   ScienceOn
9 Lim, Y.J., S.K. Baek, S.I. Jung and H.S. Won. 2013. Cloud & big data for the smart internet services. Korea Communications Agency PM Issue Report 2013 3(1):1-34 (임용재, 백선경, 정성인, 원희선. 2013. 스마트인터넷 서비스를 위한 클라우드와 빅데이터. 한국방송통신전파진흥원 PM Issue Report 2013 3(1):1-34).
10 Nielsen, A.A. 2011. Kernel maximum autocorrelation factor and minimum noise fraction transformations. IEEE Transactions on Image Processing 20:612-624.   DOI   ScienceOn
11 NIPA. 2013. ICP Spot Issue, August 2013. 24pp (정보통신산업진흥원. 2013. ICT Spot Issue, 2013년 8월, 24쪽).
12 OpenStack. 2013. OpenStack community welcome guide. http://www.openstack.org/assets/welcome-guide/OpenStackWelcomeGuide.pdf.
13 Yang, C., Y. Xu and D. Nebert. 2013. Redefining the possibility of digital Earth and geosciences with spatial cloud computing. International Journal of Digital Earth 6:297-312.   DOI
14 Yue, P., H. Zhou, J. Gong and L. Hu. 2013. Geoprocessing in cloud computing platforms- a comparative analysis. International Journal of Digital Earth 6:404-425.   DOI