• 首 页
  • 实验室简介
  • 科学研究
    • 实验室定位
    • 研究目标
    • 研究方向
    • 研究项目
    • 研究工作进展
  • 科研队伍
    • 队伍建设
    • 学科组
  • 研究生教育
    • 简介
    • 学科与学位点
    • 研究生导师
    • 在读研究生
    • 毕业研究生
  • 科研成果
    • 获奖
    • 专著
    • 学术论文
    • 专利
  • 联系我们
  • 首页
  • 实验室简介
  • 科学研究
    • 实验室定位
    • 研究目标
    • 研究方向
    • 研究项目
    • 研究工作进展
  • 科研队伍
    • 队伍建设
    • 学科组
  • 研究生教育
    • 简介
    • 学科与学位点
    • 研究生导师
    • 在读研究生
    • 毕业研究生
  • 科研成果
    • 获奖
    • 专著
    • 学术论文
    • 专利
  • 联系我们
  1. 当前位置:首页    新闻动态    最新成果
最新成果

Classification of Conservation Tillage Using Enhanced Spatial and Temporal Adaptive Reflectance Fusion Model

来源:

来源:   |  发布时间:2023-02-21   |  【 大  中  小 】

 

第一作者:

Jiang,Dapeng; Du, Jia

英文第一作者:

Jiang,Dapeng; Du, Jia

联系作者:

Du, Jia

英文联系作者:

Du, Jia

发表年度:

2023

卷:

15

摘要:

  In the remote sensing monitoring of conservation tillage, the acquisition of remote sensing data with high spatial and temporal resolution is critical. The current optical remote sensing images cannot realize both temporal and spatial resolution, especially under cloud and rain interference. Thus, this study employs the enhanced spatial and temporal adaptive reflectance fusion model (ESTARFM) to obtain the normalized difference tillage index (NDTI) with both temporal and spatial resolution estimated by Sentinel?2 and MODIS using the Index?then?Blend (IB) and Blend?then?Index (BI) fusion schemes. After comparison, the IB scheme was better than the BI scheme in predicting results and prediction efficiency. The NDTI predicted by ESTARFM and Sentinel?2 on June 12, 2020 was compared. A coefficient of determination R2 of 0.73 and RMSE of 0.000117 was obtained, indicating a high prediction accuracy, which meets the prediction requirements. Based on the predicted ESTARFM NDTI of the study area on May 17, 2021, the maize residue cover (MRC) of the study area was estimated using the previously constructed MRC unary linear regression model. The MRC of the sampling points of the remote sensing images was estimated by verifying the predicted ESTARFM NDTI with the MRC of the sampling points taken in the field extracted by the maximum likelihood classifier, which has a coefficient of determination R2 of 0.78 and RMSE of 0.00676, signifying better prediction results. The proposed method provides considerable data sources for the remote sensing monitoring studies of conservation tillage.

刊物名称:

Remote Sensing

参与作者:

Song,Kaishan, Zhao,Boyu, ZhangYiwei; Zhang,Weijian


附件下载:

版权所有 © 中国科学院长春净月潭遥感实验站 吉ICP备05002032号-1 吉公网安备22017302000214号
地址:吉林省长春市高新北区盛北大街4888号 邮编:130102
电话:+86 431 85542227  Email:jyrs@iga.ac.cn