Machine learning regression algorithms for biophysical parameter retrieval: Opportunities for Sentinel-2 and -3

Remote Sensing of Environment(2012)

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摘要
ESA's upcoming satellites Sentinel-2 (S2) and Sentinel-3 (S3) aim to ensure continuity for Landsat 5/7, SPOT-5, SPOT-Vegetation and Envisat MERIS observations by providing superspectral images of high spatial and temporal resolution. S2 and S3 will deliver near real-time operational products with a high accuracy for land monitoring. This unprecedented data availability leads to an urgent need for developing robust and accurate retrieval methods. Machine learning regression algorithms may be powerful candidates for the estimation of biophysical parameters from satellite reflectance measurements because of their ability to perform adaptive, nonlinear data fitting.
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关键词
Sentinel-2,Sentinel-3,Machine learning,Regression algorithms,Support vector regression (SVR),Kernel ridge regression (KRR),Gaussian Processes regression (GPR),Biophysical parameter retrieval
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