期刊文献+

Support vector machine regression(SVR)-based nonlinear modeling of radiometric transforming relation for the coarse-resolution data-referenced relative radiometric normalization(RRN)

原文传递
导出
摘要 Radiometric normalization,as an essential step for multi-source and multi-temporal data processing,has received critical attention.Relative Radiometric Normalization(RRN)method has been primarily used for eliminating the radiometric inconsistency.The radiometric trans-forming relation between the subject image and the reference image is an essential aspect of RRN.Aimed at accurate radiometric transforming relation modeling,the learning-based nonlinear regression method,Support Vector machine Regression(SVR)is used for fitting the complicated radiometric transforming relation for the coarse-resolution data-referenced RRN.To evaluate the effectiveness of the proposed method,a series of experiments are performed,including two synthetic data experiments and one real data experiment.And the proposed method is compared with other methods that use linear regression,Artificial Neural Network(ANN)or Random Forest(RF)for radiometric transforming relation modeling.The results show that the proposed method performs well on fitting the radiometric transforming relation and could enhance the RRN performance.
出处 《Geo-Spatial Information Science》 SCIE CSCD 2020年第3期237-247,I0004,共12页 地球空间信息科学学报(英文)
基金 This research was funded by the National Natural Science Fund of China[grant number 41701415] Science fund project of Wuhan Institute of Technology[grant number K201724] Science and Technology Development Funds Project of Department of Transportation of Hubei Province[grant number 201900001].
  • 相关文献

二级参考文献20

  • 1Action Outline on Promoting the Development of Big Data ( [ 2015 ] 50). 2015.the State Council. the People's Republic of China.
  • 2中华人民共和国国务院《关于印发促进夫数据发展行动纲要的通知》.2015.国发[2015]50号.
  • 3Decision on Speeding up the Cultivation and Development of Strategic Emerging Industries ( [ 2010 ]32).2010. the State Council, the People's Republic of China.
  • 4中华人民处和同国务院《天于加快培育和发展战略性新兴产业的决定》.2010.国发[2010]32号).
  • 5Guidance on Innovation Investment and Financing Mechanisms in Key Areas to Encourage Social Investment ( [2014 ] 60).2014.the State Council, the People's Republic of China.
  • 6中华人民共和国国务院《创新重点领域投融资机制鼓励社会投资的指导意见》.2014国发[2014]60号).
  • 7National Strategic Emerging Industry Development Plan in 12^th Five- Year ( [ 2012 ] 28). 2012. the State Council, the People's Repub- lic of China.
  • 8中华人民共和国国务院《关于印发“十二五”国家战略性新兴产业发展规划的通知》.2012.国发[2012]28号).
  • 9Opinions on Promoting Information Consumption to expand Domestic Demand ([ 2013 ] 32).2013. the State Council, the People's Re-publicofChina.
  • 10中华人民共和国国务院《关于促进信息消费扩大内需的若干意见》2013.国发[2013]32号.

共引文献70

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