Indirect estimation of structural parameters in South African forests using MISR-HR and LiDAR remote sensing data
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Date
Authors
Mathieu, Renaud
Wessels, K.J. (Konrad)
Naidoo, Laven
Verstraete, Michel
Asner, Gregory
Main, Russell
Journal Title
Journal ISSN
Volume Title
Publisher
MDPI Publishing
Abstract
Forest structural data are essential for assessing biophysical processes and changes,
and promoting sustainable forest management. For 18+ years, the Multi-Angle Imaging
SpectroRadiometer (MISR) instrument has been observing the land surface reflectance anisotropy,
which is known to be related to vegetation structure. This study sought to determine the performance
of a new MISR-High Resolution (HR) dataset, recently produced at a full 275 m spatial resolution,
and consisting of 36 Bidirectional Reflectance Factors (BRF) and 12 Rahman–Pinty–Verstraete (RPV)
parameters, to estimate the mean tree height (Hmean) and canopy cover (CC) across structurally
diverse, heterogeneous, and fragmented forest types in South Africa. Airborne LiDAR data were
used to train and validate Random Forest models which were tested across various MISR-HR
scenarios. The combination of MISR multi-angular and multispectral data was consistently effective in
improving the estimation of structural parameters, and produced the lowest relative root mean square
error (rRMSE) (33.14% and 38.58%), forHmean and CC respectively. The combined RPV parameters for
all four bands yielded the best results in comparison to the models of the RPV parameters separately:
Hmean (R2 = 0.71, rRMSE = 34.84%) and CC (R2 = 0.60, rRMSE = 40.96%). However, the combined
RPV parameters for all four bands in comparison to the MISR-HR BRF 36 band model it performed
poorer (rRMSE of 5.1% and 6.2% higher for Hmean and CC, respectively). When considered separately,
savanna forest type had greater improvement when adding multi-angular data, with the highest
accuracies obtained for the Hmean parameter (R2 of 0.67, rRMSE of 31.28%). The findings demonstrate
the potential of the optical multi-spectral and multi-directional newly processed data (MISR-HR) for
estimating forest structure across Southern African forest types.
Description
Keywords
Vegetation structure, LiDAR, Multi-spectral and multi-angular measurements, MISR-HR, Random forest, Multi-angle imaging spectroradiometer (MISR)
Sustainable Development Goals
Citation
Mahlangu, P., Mathieu, R., Wessels, K. 2018, 'Indirect estimation of structural parameters in South African forests using MISR-HR and LiDAR remote sensing data', Remote Sensing, vol. 10, no. 10, art. 1537, pp. 1-31.