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Using growing-season time series coherence for improved peatland mapping: Comparing the contributions of Sentinel-1 and RADARSAT-2 coherence in full and partial time series

Authors :
Millard, K. (Koreen)
Kirby, P. (Patrick)
Nandlall, S. (Sacha)
Behnamian, A. (Amir)
Banks, S. (Sarah)
Pacini, F. (Fabrizio)
Millard, K. (Koreen)
Kirby, P. (Patrick)
Nandlall, S. (Sacha)
Behnamian, A. (Amir)
Banks, S. (Sarah)
Pacini, F. (Fabrizio)
Source :
Remote Sensing vol. 12 no. 15
Publication Year :
2020

Abstract

Differences in topographic structure, vegetation structure, and surface wetness exist between peatland classes, making active remote sensing techniques such as SAR and LiDAR promising for peatland mapping. As the timing of green-up, senescence, and hydrologic conditions vary differently in peatland classes, and in comparison with upland classes, full growing-season time series SAR imagery was expected to produce higher accuracy classification results than using only a few select SAR images. Both interferometric coherence, amplitude and difference in amplitude time series datasets were assessed, as it was hypothesized that these may be able to capture subtle changes in phenology and hydrology, which in turn differentiate classes throughout a growing season. Groups of variables were compared for their effectiveness in Random Forest classification for both Sentinel-1 and Radarsat-2. The Shapley value was used to determine the contribution of each group of variables in thirty scenarios, and Mean Decrease in Accuracy was compared to evaluate its ability to rank variables by relative importance. Despite being dual-pol, the results of classifications using Sentinel-1 coherence (12-day repeat) were significantly better than u

Details

Database :
OAIster
Journal :
Remote Sensing vol. 12 no. 15
Notes :
English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1225583252
Document Type :
Electronic Resource
Full Text :
https://doi.org/10.3390.RS12152465