| 1 |
A New Cross-Fusion Method to Automatically Determine the Optimal Input Image Pairs for NDVI Spatiotemporal Data Fusion  |
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| 2 |
On the blending of the Landsat and MODIS surface reflectance: predicting daily Landsat surface reflectance  |
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| 3 |
A comparison of STARFM and an unmixing-based algorithm for Landsat and MODIS data fusion  |
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| 4 |
Spatiotemporal Reflectance Fusion via Sparse Representation  |
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| 5 |
Blending Landsat and MODIS Data to Generate Multispectral Indices: A Comparison of “Index-then-Blend” and “Blend-then-Index” Approaches  |
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| 6 |
A Novel Deep Learning-Based Spatiotemporal Fusion Method for Combining Satellite Images with Different Resolutions Using a Two-Stream Convolutional Neural Network  |
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| 7 |
Kim, B., H. Kim, K. Song, S. Hong, and W. Lee, 2015. Analysis on technical specification and application for the medium-satellite payload in agriculture and forestry, Journal of Satellite, Information and Communications, 10(4): 117-127(in Korean with English abstract). |
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| 8 |
Kim, Y. and N.-W. Park, 2019. Comparison of spatiotemporal fusion models of multiple satellite images for vegetation monitoring, Korean Journal of Remote Sensing, 35(6-3): 1209-1219 (in Korean with English abstract). |
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| 9 |
Kim, Y., P.C. Kyriakidis, and N.-W. Park, 2020. A cross-resolution, spatiotemporal geostatistical fusion model for combining satellite image timeseries of different spatial and temporal resolutions, Remote Sensing, 12(10): 1553. |
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| 10 |
Lee, H.-S. and K.-S. Lee, 2017. Effect of red-edge band to estimate leaf area index in close canopy forest, Korean Journal of Remote Sensing, 33(5-1): 571-585 (in Korean with English abstract). |
미소장 |
| 11 |
Liu, M., Y. Ke, Q. Yin, X. Chen, and J. Im, 2019. Comparison of five spatio-temporal satellite image fusion models over landscapes with various spatial heterogeneity and temporal variation, Remote Sensing, 11(22): 2612. |
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| 12 |
Spatiotemporal Satellite Image Fusion Through One-Pair Image Learning  |
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| 13 |
Spatiotemporal Satellite Image Fusion Using Deep Convolutional Neural Networks  |
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| 14 |
Image quality assessment: from error visibility to structural similarity.  |
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| 15 |
An Improved STARFM with Help of an Unmixing-Based Method to Generate High Spatial and Temporal Resolution Remote Sensing Data in Complex Heterogeneous Regions  |
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| 16 |
Xie, D., F. Gao, L. Sun, and M. Anderson, 2018. Improving spatial-temporal data fusion by choosing optimal input image pairs, Remote Sensing, 10(7): 1142. |
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| 17 |
Significant Remote Sensing Vegetation Indices: A Review of Developments and Applications  |
미소장 |
| 18 |
Image Super-Resolution Via Sparse Representation  |
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| 19 |
An Enhanced Spatial and Temporal Data Fusion Model for Fusing Landsat and MODIS Surface Reflectance to Generate High Temporal Landsat-Like Data  |
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| 20 |
Spatiotemporal Fusion of Multisource Remote Sensing Data: Literature Survey, Taxonomy, Principles, Applications, and Future Directions  |
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| 21 |
A flexible spatiotemporal method for fusing satellite images with different resolutions  |
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| 22 |
An enhanced spatial and temporal adaptive reflectance fusion model for complex heterogeneous regions  |
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| 23 |
Unmixing-Based Landsat TM and MERIS FR Data Fusion  |
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