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Empirical Modelling of Vegetation Abundance from Airborne Hyperspectral Data for Upland Peatland Restoration Monitoring

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posted on 2016-01-08, 10:37 authored by Beth Cole, J. McMorrow, M. Evans
Peatlands are important terrestrial carbon stores. Restoration of degraded peatlands to restore ecosystem services is a major area of conservation effort. Monitoring is crucial to judge the success of this restoration. Remote sensing is a potential tool to provide landscape-scale information on the habitat condition. Using an empirical modelling approach, this paper aims to use airborne hyperspectral image data with ground vegetation survey data to model vegetation abundance for a degraded upland blanket bog in the United Kingdom (UK), which is undergoing restoration. A predictive model for vegetation abundance of Plant Functional Types (PFT) was produced using a Partial Least Squares Regression (PLSR) and applied to the whole restoration site. A sensitivity test on the relationships between spectral data and vegetation abundance at PFT and single species level confirmed that PFT was the correct scale for analysis. The PLSR modelling allows selection of variables based upon the weighted regression coefficient of the individual spectral bands, showing which bands have the most influence on the model. These results suggest that the SWIR has less value for monitoring peatland vegetation from hyperspectral images than initially predicted. RMSE values for the validation data range between 10% and 16% cover, indicating that the models can be used as an operational tool, considering the subjective nature of existing vegetation survey results. These predicted coverage images are the first quantitative landscape scale monitoring results to be produced for the site. High resolution hyperspectral mapping of PFTs has the potential to assess recovery of peatland systems at landscape scale for the first time.

Funding

The project was funded by a NERC CASE studentship with Natural England (NE/F013787/1), held at The University of Manchester. The authors would like to acknowledge the support of Moors for the Future Partnership for facilitating the work and in their role as CASE partner. The hyperspectral images were collected by the NERC Airborne Research and Survey Facility (ARSF), and the ASD field spectrometer was on loan from the NERC Field Spectroscopy Facility (FSF).

History

Citation

Remote Sensing 2014, 6(1), 716-739;

Version

  • VoR (Version of Record)

Published in

Remote Sensing 2014

Publisher

MDPI

issn

2072-4292

eissn

2072-4292

Acceptance date

2013-12-31

Available date

2016-01-08

Publisher version

http://www.mdpi.com/2072-4292/6/1/716

Language

en

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