Hybrid retrieval of grass biophysical variables based-on radiative transfer, active learning and regression methods using Sentinel-2 data in Marakele National Park
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Date
Authors
Tsele, Philemon
Ramoelo, Abel
Journal Title
Journal ISSN
Volume Title
Publisher
Taylor and Francis
Abstract
Biophysical variables such as leaf area index (LAI) and leaf chlorophyll content (LCC) are cited as essential biodiversity variables. A comprehensive comparison and integration of retrieval methods is needed for the estimation of biophysical variables such as LAI and LCC over a multispecies grass canopy. This study tested an assortment of five potentially robust, nonparametric regression methods (NPRMs) for inversion of radiative transfer model (RTM) to retrieve grass LAI and LCC in the Marakele National Park (MNP) of South Africa. The NPRMs used were, namely (i) Partial least squares regression (PLSR), (ii) Principle components regression (PCR), (iii) Kernel ridge regression (KRR), (iv) Random forest regression (RFR), and (v) K-nearest neighbours regression (KNNR). Furthermore, the study attempted to constrain the inversion process by using active learning (AL) techniques which ensured the selection of informative samples from a large pool of RTM simulations. Results show the most accurate grass LAI and LCC retrievals had lower relative root mean squared errors (RRMSEs) of 39.87% and 16.58% respectively. These findings have significant implications for the development of transferable rangeland monitoring systems in protected mountainous regions.
Description
DATA AVAILABILITY STATEMENT :
We understand that the publication of the data is becoming a good practice in research.
Keywords
Leaf area index (LAI), Leaf chlorophyll content (LCC), Radiative transfer model (RTM), Sentinel-2 imagery, Active learning, PROSAIL, Marakele National Park (MNP), South Africa (SA), Nonparametric regression method (NPRM), Partial least squares regression (PLSR), Principle components regression (PCR), Kernel ridge regression (KRR), Random forest regression (RFR), K-nearest neighbours regression (KNNR), Relative root mean squared errors (RRMSEs), SDG-13: Climate action, SDG-15: Life on land
Sustainable Development Goals
SDG-13:Climate action
SDG-15:Life on land
SDG-15:Life on land
Citation
Philemon Tsele & Abel Ramoelo (2024) Hybrid retrieval of grass biophysical
variables based-on radiative transfer, active learning and regression methods using
Sentinel-2 data in Marakele National Park, Geocarto International, 39:1, 2387087, DOI: 10.1080/10106049.2024.2387087.
