Article
Details
Citation
Furtado LFAdA, Silva TSF & Novo EMLdM (2016) Dual-season and full-polarimetric C band SAR assessment for vegetation mapping in the Amazon v¨¢rzea wetlands. Remote Sensing of Environment, 174, pp. 212-222. https://doi.org/10.1016/j.rse.2015.12.013
Abstract
This study answered the following questions: 1) Is polarimetric C-band SAR (PolSAR) more efficient than dual-polarization (dual-pol) C-band SAR for mapping v¨¢rzea floodplain vegetation types, when using images of a single hydrological period? 2) Are single-season C-band PolSAR images more accurate for mapping v¨¢rzea vegetation types than dual-season dual-pol C-band SAR images? 3) What are the most efficient polarimetric descriptors for mapping v¨¢rzea vegetation types? We applied the Random Forests algorithm to classify dual-pol SAR images and polarimetric descriptors derived from two full-polarimetric Radarsat-2 C-band images acquired during the low and high water seasons of Lago Grande de Curuai floodplain, lower Amazon, Brazil. We used the Kappa index of agreement (¦Ê), Allocation Disagreement (AD) and Quantity Disagreement (QD), and Producer's and User's accuracy measurements to assess the classification results. Our results showed that single-season full-polarimetric C-band data can yield more accurate classifications than single-season dual-pol C-band SAR imagery and similar accuracies to dual-season dual-pol C-band SAR classifications. Still, dual-season PolSAR achieved the highest accuracies, showing that seasonality is paramount for obtaining high accuracies in wetland land cover classification, regardless of SAR image type. On average, single-season classifications of low-water periods were less accurate than high-water classifications, likely due to plant phenology and flooding conditions. Classifications using model-based polarimetric decompositions (such as Freeman-Durden, Yamaguchi and van Zyl) produced the highest accuracies (¦Ê greater than 0.8; AD ranging from 7.5% to 2.5%; QD ranging from 15% to 12%), while eigenvector-based decompositions such as Touzi and Cloude-Pottier had the worst accuracies (¦Ê ranging from 0.5 to 0.7; AD greater than 10%; QD smaller than 10%). Vegetation types with dense canopies (Shrubs, Floodable Forests and Emergent Macrophytes), whose classification is challenging using C-band, were accurately classified using dual-season full-polarimetric SAR data, with Producer's and User's accuracies between 80% and 90%. We conclude that full polarimetric C-band imagery can yield very accurate classifications of v¨¢rzea vegetation (¦Ê ~0.8, AD ~3% and QD ~10%) and can be used as an operational tool for forested wetland mapping.
Keywords
PolSAR; wetlands; polarimetric decomposition; multitemporal; mapping accuracy;
Journal
Remote Sensing of Environment: Volume 174
Status | Published |
---|---|
Publication date | 01/03/2016 |
Publication date online | 22/12/2015 |
Date accepted by journal | 10/12/2015 |
URL | |
Publisher | Elsevier Inc. |
ISSN | 0034-4257 |
People (1)
Senior Lecturer, Biological and Environmental Sciences