4.7 Article

Mapping spatial distribution and biomass of coastal wetland vegetation in Indonesian Papua by combining active and passive remotely sensed data

期刊

REMOTE SENSING OF ENVIRONMENT
卷 183, 期 -, 页码 65-81

出版社

ELSEVIER SCIENCE INC
DOI: 10.1016/j.rse.2016.04.026

关键词

Indonesia; Mangroves; Classification; Biomass; Landsat-8; Radar

资金

  1. USAID Indonesia Forest and Climate Support (IFACS) through Kamoro Collaborative Wetlands Management Program [AG-3187-C-13-0010]
  2. USAID Indonesia Forest and Climate Support (IFACS) Program and their Timika field office

向作者/读者索取更多资源

There is ongoing interest to develop remote sensing methods for mapping and monitoring the spatial distribution and biomass of mangroves. In this study, we develop a suite of methods to evaluate the combination of Landsat-8, ALOS PALSAR, and SRTM data for mapping spatial distribution of mangrove composition, canopy height, and aboveground biomass in the wide intertidal zones and coastal plains of Mimika district, Papua, Indonesia. Image segmentation followed by visual interpretation of composite PALSAR images was used to delineate mangrove areas, whereas a flexible statistical rule based classification of spectral signatures from Landsat-8 images was used to classify mangrove associations. The overall accuracy of land cover classification was 94.38% with a kappa coefficient of 0.94 when validated with field inventory data and Google Earth images. Mangrove height and aboveground biomass were mapped using the SRTM DEM, which were calibrated with field-measured data via quantile regression models. There was a strong correlation between the SRTM DEM and the 0.98 quantile of field canopy heights (H-.98), which was used to represent the tallest trees in each of 196 10 m radius subplots (r = 0.84 and R-2 = 0.804). Model performance was evaluated through 10,000 bootstrapped simulations, producing a mean absolute error (MAE) of 3.0 m for canopy height estimation over 30 m pixels of SRTM data. Quantile regression revealed a relatively strong non-linear relationship between the SRTM derived canopy height model and aboveground biomass measured in 0.5 ha mangrove inventory plots (n = 33, R-2 = 0.46). The model results produced estimates of mean standing biomass of 237.52 +/- 982 Mg/ha in short canopy (Avicennia/Sonneratia) stands to 353.52 +/- 98.43 Mg/ha in mature tall canopy (Rhizophora) dominated forest. The model estimates of mangrove biomass were within 90% confidence intervals of area-weighted biomass derived from field measurements. When validated at the landscape scale, the difference between modeled and measured aboveground mangrove biomass was 3.48% with MAE of 105.75 Mg/ha. These results indicate that the approaches developed here are reliable for mapping and monitoring mangrove composition, height, and biomass over large areas of Indonesia. (C) 2016 Elsevier Inc. All rights reserved.

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