期刊文献+

大数据通用处理平台及其在ISR领域的潜在军事应用 被引量:6

Common Big Data Processing Platform and Its Potential Military Applications in ISR
下载PDF
导出
摘要 海量数据的出现催生了"大数据"这一专业术语的诞生,"大数据"已经成为当今信息技术领域和产业界最热门的话题。在介绍大数据定义及其内涵的基础上,具体讨论了大数据通用处理平台的结构组成及其主要功能,并对其在未来综合情报、监视与侦察(ISR)领域可能的应用进行了举例分析。 The terminology of "Big Data" is born with the use ofthe huge amount of data. Nowadays, the "Big Data" project is becoming a hottest issue in the IT area and industries. Based on a introduction of the definition and content of the "Big Data", a detailed discussion about the configuration and its main functions are given in the paper. Finally, an application example of the common processing platforms for the big data in the military ISR area is analyzed in the paper.
作者 蒋盘林
出处 《通信对抗》 2013年第3期1-5,共5页 Communication Countermeasures
关键词 大数据 通用处理平台 情报 监视与侦察(ISR) 数据价值 big data common processing platform intelligence, surveillance and reconnaissance(ISR.) data value
  • 相关文献

参考文献5

  • 1Mitchell I,Wilson M.Linked Data:Connecting and Exploiting Big Data[R/OL]. http://www.fujitsu.com/uk . 2012
  • 2Panasas.Big Data. http://www.Panasas.com . 2012
  • 3Sathyanarayana R.Big Data Appliances[R/OL]. http://cdn.ttgtmedia.com/rms/pdf/Big%20Data%20Appliances.pdf . 2011
  • 4Krishna D.Big Data[R/OL][]..2011
  • 5FaheyS.Big Dataand Analytics forNationalSecurity[R/OL]. http://www.stanford.edu/group/mmds/slides2012/s-fahey.pdf . 2012

同被引文献47

  • 1赵连伟,罗四维,赵艳敞,刘蕴辉.高维数据流形的低维嵌入及嵌入维数研究[J].软件学报,2005,16(8):1423-1430. 被引量:54
  • 2Mayer-SchonbergerViktor.大数据时代[M].周涛,译.杭州:浙江人民出版社,2012.
  • 3Big Data Across the Federal Government[EB/OL]. ht- tp://www, whitehouse, gov/sites/default/files/micros- ites/ostp/big data._faet_sheet final_l, pdf, 2012-10-02.
  • 4李纪舟.美军大数据发展战略及对我启示[J].外军网络空间战,2012(4).
  • 5Zheng Y, Zhou X F. Computing with spatial trajecto- ries[M]. New York. Springer-Verlag,2011:143-177.
  • 6Kharrat A, Popa I S, ZeitouniKarine, et al. Cluste- ring algorithm for network constraint trajectories [C]//Proceedings of 13th International Symposium on Spatial Data Handling, Montpellier, France: Spring- er, 2008 : 631-647.
  • 7Mamoulis N, Cao H P, Kollios G, et al. Mining, in- dexing, and querying historical spatiotemporal data [C]//Won K, Ron K, Johannes G, William D, eds. Proc. of the 10th ACM SIGKDD Int'l Conf. on KnowledgeDiscovery and Data Mining (KDD 2004). New York: ACM Press, 2004 : 236-245.
  • 8Verhein F, Chawla S. Mining spatio-temporal associa- tion rules, sources, sinks, stationary regions and thoroughfares in objectmobility databases [C]//Lee M, Tan KL, Wuwongse V, eds. Proe. of the 11th Int'l Conf. on Database Systems for Advanced Appli- cations. Berlin, Heidelberg: Springer-Verlag, 2006: 187-201.
  • 9Vlachos M, Gunopulos D, Kollios G. Robust similar- ity measures for mobile object trajectories[C]//Pro- ceedings of the 13th International Workshop on Data- base and Expert Systems Applications. IEEE Com- puter Society, 2002 : 721-728.
  • 10Giannotti F, Nanni M, Pedreschi D, et al. Trajectory pattern mining[C]//Berkhin P, Caruana R, Wu XD, eds. Proc. of the 13thACM SIGKDD Int'l Conf. on Knowledge Discovery and Data Mining(KDD 2007). New York: ACM Press, 2007 : 330-339.

引证文献6

二级引证文献53

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部