6533b7d3fe1ef96bd1260101

RESEARCH PRODUCT

Quantifying Vegetation Biophysical Variables from Imaging Spectroscopy Data: A Review on Retrieval Methods

Philip LewisJean-philippe Gastellu-etchegorryJose MorenoJochem VerrelstPeter NorthZbyněk MalenovskýChristiaan Van Der TolGustau Camps-valls

subject

Data streamEarth observation010504 meteorology & atmospheric sciencesComputer scienceUT-Hybrid-D010502 geochemistry & geophysicscomputer.software_genreQuantitative Biology - Quantitative Methods01 natural sciencesArticleGeochemistry and PetrologyFOS: Electrical engineering electronic engineering information engineeringQuantitative Methods (q-bio.QM)0105 earth and related environmental sciencesParametric statisticsData stream miningImage and Video Processing (eess.IV)Electrical Engineering and Systems Science - Image and Video Processing15. Life on land22/4 OA procedureRegressionImaging spectroscopyGeophysicsSpectroradiometer13. Climate actionMulticollinearityFOS: Biological sciencesITC-ISI-JOURNAL-ARTICLEData miningcomputer

description

An unprecedented spectroscopic data stream will soon become available with forthcoming Earth-observing satellite missions equipped with imaging spectroradiometers. This data stream will open up a vast array of opportunities to quantify a diversity of biochemical and structural vegetation properties. The processing requirements for such large data streams require reliable retrieval techniques enabling the spatiotemporally explicit quantification of biophysical variables. With the aim of preparing for this new era of Earth observation, this review summarizes the state-of-the-art retrieval methods that have been applied in experimental imaging spectroscopy studies inferring all kinds of vegetation biophysical variables. Identified retrieval methods are categorized into: (1) parametric regression, including vegetation indices, shape indices, and spectral transformations; (2) non-parametric regression, including linear and non-linear machine learning regression algorithms; (3) physically-based, including inversion of radiative transfer models (RTMs) using numerical optimization and look-up-table approaches; and (4) hybrid regression methods, which combine RTM simulations with machine learning regression methods. For each of these categories, an overview of widely applied methods with application to mapping vegetation properties is given. In view of processing imaging spectroscopy data, a critical aspect involves the challenge of dealing with spectral multicollinearity. The ability to provide robust estimates, retrieval uncertainties, and acceptable retrieval processing speed are other important aspects in view of operational processing. Recommendations towards new-generation spectroscopy-based processing chains for the operational production of biophysical variables are given.

10.1007/s10712-018-9478-yhttp://dx.doi.org/10.1007/s10712-018-9478-y