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A modified flexible spatiotemporal data fusion model

         

摘要

Remote sensing spatiotemporal fusion models blend multi-source images of different spatial resolutions to create synthetic images with high resolution and frequency,contributing to time series research where high quality observations are not available with sufficient frequency.However,existing models are vulnerable to spatial heterogeneity and land cover changes,which are frequent in human-dominated regions.To obtain quality time series of satellite images in a human-dominated region,this study developed the Modified Flexible Spatial-temporal Data Fusion(MFSDAF)approach based on the Flexible Spatial-temporal Data Fusion(FSDAF)model by using the enhanced linear regression(ELR).Multiple experiments of various land cover change scenarios were conducted based on both actual and simulated satellite images,respectively.The proposed MFSDAF model was validated by using the correlation coefficient(r),relative root mean square error(RRMSE),and structural similarity(SSIM),and was then compared with the Enhanced Spatial and Temporal Adaptive Reflectance Fusion Model(ESTARFM)and FSDAF models.Results show that in the presence of significant land cover change,MFSDAF showed a maximum increase in r,RRMSE,and SSIM of 0.0313,0.0109 and 0.049,respectively,compared to FSDAF,while ESTARFM performed best with less temporal difference of in the input images.In conditions of stable landscape changes,the three performance statistics indicated a small advantage of MFSDAF over FSDAF,but were 0.0286,0.0102,0.0317 higher than for ESTARFM,respectively.MFSDAF showed greater accuracy of capturing subtle changes and created high-precision images from both actual and simulated satellite images.

著录项

  • 来源
    《地球科学前沿:英文版》 |2020年第3期|P.601-614|共14页
  • 作者单位

    Key Laboratory of Remote Sensing of Soil Erosion and Disaster Protection College of Environment and Resources Fuzhou University Fuzhou 350116 China;

    Key Laboratory of Remote Sensing of Soil Erosion and Disaster Protection College of Environment and Resources Fuzhou University Fuzhou 350116 China;

    Key Laboratory of Digital Earth Science Institute of Remote Sensing and Digital Earth Chinese Academy of Sciences Beijing 100094 China;

    Key Laboratory of Remote Sensing of Soil Erosion and Disaster Protection College of Environment and Resources Fuzhou University Fuzhou 350116 China;

    College of Geography and Tourism Anhui Normal University Wuhu 241000 China;

    College of Geomatics Shandong University of Science and Technology Qingdao 266590 China;

    Spatial Information Research Center of Fujian Province Fuzhou University Fuzhou 350116 China;

    Key Laboratory of Remote Sensing of Soil Erosion and Disaster Protection College of Environment and Resources Fuzhou University Fuzhou 350116 China;

    Key Laboratory of Remote Sensing of Soil Erosion and Disaster Protection College of Environment and Resources Fuzhou University Fuzhou 350116 China;

    Key Laboratory of Remote Sensing of Soil Erosion and Disaster Protection College of Environment and Resources Fuzhou University Fuzhou 350116 ChinaJoint Global Change Research Institute Pacific Northwest National Laboratory and University of Maryland College Park MD20740 USA;

    Key Laboratory of Digital Earth Science Institute of Remote Sensing and Digital Earth Chinese Academy of Sciences Beijing 100094 China;

  • 原文格式 PDF
  • 正文语种 chi
  • 中图分类 计算技术、计算机技术;
  • 关键词

    MFSDAF; enhanced linear regression; land cover change; heterogeneous; time-series;

    机译:MFSDAF;增强线性回归;陆地覆盖变化;异质;时间序列;
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