Title of article :
Machine learning regression algorithms for biophysical parameter retrieval: Opportunities for Sentinel-2 and -3
Author/Authors :
Verrelst، نويسنده , , Jochem and Muٌoz، نويسنده , , Jordi Martin-Alonso، نويسنده , , Luis and Delegido، نويسنده , , Jesْs and Rivera، نويسنده , , Juan Pablo and Camps-Valls، نويسنده , , Gustavo and Moreno، نويسنده , , José، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2012
Abstract :
ESAʹs 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.
ng data from the ESA-led field campaign SPARC (Barrax, Spain) we have compared the utility of four state-of-the-art machine learning regression algorithms and four different S2 and S3 band settings to assess three important biophysical parameters: leaf chlorophyll content (Chl), leaf area index (LAI) and fractional vegetation cover (FVC). The tested Sentinel configurations were: S2-10 m (4 bands), S2-20 m (8 bands), S2-60 m (10 bands) and S3-300 m (19 bands), and the tested methods were: neural networks (NN), support vector regression (SVR), kernel ridge regression (KRR), and Gaussian processes regression (GPR).
tperformed the other retrieval methods for the majority of tested configurations and was the only method that reached the 10% precision required by end users in the estimation of Chl. Also, although validated with an RMSE accuracy around 20%, GPR yielded optimal LAI and FVC estimates at highest S2 spatial resolution of 10 m with only four bands. In addition to high accuracy values, GPR also provided confidence intervals of the estimates and insight in relevant bands, which are key advantages over the other methods. Given all this, GPR proved to be a fast and accurate nonlinear retrieval algorithm that can be potentially implemented for operational monitoring applications.
Keywords :
Sentinel-2 , Sentinel-3 , Machine Learning , Regression algorithms , Support vector regression (SVR) , Kernel ridge regression (KRR) , Gaussian Processes regression (GPR) , Biophysical parameter retrieval
Journal title :
Remote Sensing of Environment
Journal title :
Remote Sensing of Environment