Publication | Open Access
Multioutput Support Vector Regression for Remote Sensing Biophysical Parameter Estimation
297
Citations
13
References
2011
Year
Environmental MonitoringEngineeringMultispectral ImagingRemote Sensing SensorEarth ScienceModel InversionSupport Vector MachineImage AnalysisData SciencePattern RecognitionBiostatisticsForest MeteorologyLeaf Area IndexSynthetic Aperture RadarOcean Remote SensingSignal ProcessingSingle-output SvrHyperspectral ImagingLand Cover MapRobust ModelingAgricultural ModelingRemote SensingOptical Remote SensingMultivariate CalibrationUnmanned Aerial SystemsKernel Method
This letter proposes a multioutput support vector regression (M-SVR) method for the simultaneous estimation of different biophysical parameters from remote sensing images. General retrieval problems require multioutput (and potentially nonlinear) regression methods. M-SVR extends the single-output SVR to multiple outputs maintaining the advantages of a sparse and compact solution by using an <formula formulatype="inline" xmlns:mml="http://www.w3.org/1998/Math/MathML" xmlns:xlink="http://www.w3.org/1999/xlink"><tex Notation="TeX">$\varepsilon$</tex> </formula> -insensitive cost function. The proposed M-SVR is evaluated in the estimation of chlorophyll content, leaf area index and fractional vegetation cover from a hyperspectral compact high-resolution imaging spectrometer images. The achieved improvement with respect to the single-output regression approach suggests that M-SVR can be considered a convenient alternative for nonparametric biophysical parameter estimation and model inversion.
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