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Mapping Forest Cover and Forest Cover Change with Airborne S-Band Radar

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posted on 2016-12-01, 15:13 authored by Ramesh K. Ningthoujam, Kevin Tansey, Heiko Balzter, K. Morrison, Sarah C. M. Johnson, F. Gerard, C. George, G. Burbidge, S. Doody, N. Veck, G. M. Llewellyn, T. Blythe
Assessments of forest cover, forest carbon stocks and carbon emissions from deforestation and degradation are increasingly important components of sustainable resource management, for combating biodiversity loss and in climate mitigation policies. Satellite remote sensing provides the only means for mapping global forest cover regularly. However, forest classification with optical data is limited by its insensitivity to three-dimensional canopy structure and cloud cover obscuring many forest regions. Synthetic Aperture Radar (SAR) sensors are increasingly being used to mitigate these problems, mainly in the L-, C- and X-band domains of the electromagnetic spectrum. S-band has not been systematically studied for this purpose. In anticipation of the British built NovaSAR-S satellite mission, this study evaluates the benefits of polarimetric S-band SAR for forest characterisation. The Michigan Microwave Canopy Scattering (MIMICS-I) radiative transfer model is utilised to understand the scattering mechanisms in forest canopies at S-band. The MIMICS-I model reveals strong S-band backscatter sensitivity to the forest canopy in comparison to soil characteristics across all polarisations and incidence angles. Airborne S-band SAR imagery over the temperate mixed forest of Savernake Forest in southern England is analysed for its information content. Based on the modelling results, S-band HH- and VV-polarisation radar backscatter and the Radar Forest Degradation Index (RFDI) are used in a forest/non-forest Maximum Likelihood classification at a spatial resolution of 6 m (70% overall accuracy, κ = 0.41) and 20 m (63% overall accuracy, κ = 0.27). The conclusion is that S-band SAR such as from NovaSAR-S is likely to be suitable for monitoring forest cover and its changes.

Funding

The authors acknowledge the AirSAR data from Airbus Defence and Space, Natural Environment Research Council, Airborne Research & Survey Facility and Space Applications Catapult (Project Code: AS 14/24) to Heiko Balzter, Kevin Tansey, Ramesh K. Ningthoujam, Keith Morrison and Sarah C.M. Johnson, and GIS database from Forestry Commission (Bristol and Savernake, UK). Leland Pierce from the Radiation Lab, The University of Michigan (United States of America) is highly appreciated for providing the MIMICS-I code. Pedro Rodriguez-Veiga, Barnard Spies, Chloe Barnes, James Wheeler, Valentin Louis, Thomas Potter, Marc Padilla (CLCR, University of Leicester) and Alexander Edwards-Smith and Jaime Polo Bermejo (Cranfield University) are acknowledged for assistance in field data collection in 2012 and 2015. Heiko Balzter was supported by the Royal Society Wolfson Research Merit Award, 2011/R3 and the NERC National Centre for Earth Observation.

History

Citation

Remote Sensing, 2016, 8(7), 577;

Author affiliation

/Organisation/COLLEGE OF SCIENCE AND ENGINEERING/Department of Geography/GIS and Remote Sensing

Version

  • VoR (Version of Record)

Published in

Remote Sensing

Publisher

MDPI

issn

2072-4292

eissn

2072-4292

Acceptance date

2016-07-04

Available date

2016-12-01

Publisher version

http://www.mdpi.com/2072-4292/8/7/577

Language

en

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