2016
DOI: 10.3390/rs8070571
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Multi-Resolution Mapping and Accuracy Assessment of Forest Carbon Density by Combining Image and Plot Data from a Nested and Clustering Sampling Design

Abstract: Abstract:Combining sample plot and image data has been widely used to map forest carbon density at local, regional, national and global scales. When mapping is conducted using multiple spatial resolution images at different scales, field observations have to be collected at the corresponding resolutions to match image values in pixel sizes. Given a study area, however, to save time and cost, field observations are often collected from sample plots having a fixed size. This will lead to inconsistency of spatial… Show more

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Cited by 12 publications
(11 citation statements)
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“…The different satellite images provide very accurate information at the local, regional and national level if their methodology is followed correctly [28]. The biomass estimated through the NDVI and simple regression was 0.95 t ha -1 with an R 2 = 0.85, values slightly lower than those obtained by Lumbierres [46] using MODIS images from NDVI (1 to 10 t ha -1 ).…”
Section: Discussionmentioning
confidence: 84%
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“…The different satellite images provide very accurate information at the local, regional and national level if their methodology is followed correctly [28]. The biomass estimated through the NDVI and simple regression was 0.95 t ha -1 with an R 2 = 0.85, values slightly lower than those obtained by Lumbierres [46] using MODIS images from NDVI (1 to 10 t ha -1 ).…”
Section: Discussionmentioning
confidence: 84%
“…To make the most accurate C estimation, the spatial resolution of the satellite image becomes a key factor in validating models. A study done by Yan [28] working with resolutions between 30 and 1000 m 2 , used a model that showed high coefficients of variation as the image resolution decreased. The results of our investigation was 5.55 (CV) with a 20×20 m resolution, the difference due to the type of satellite used (Sentinel 2a).…”
Section: Discussionmentioning
confidence: 99%
“…For enhancing the correlations between forest carbon density and spectral variables, we retrieved 200 spectral variables from the Landsat 8 image and its transformation images, including 6 original bands, 6 band inversions, 30 two-band ratios, 60 three-band ratios, 30 difference vegetation indices, 14 simple vegetation indices, 6 principal component variables, and 48 texture variables from the gray level co-occurrence matrix of the image bands [3].…”
Section: Remote Sensing Datamentioning
confidence: 99%
“…Then, the area-weighted RDMR was computed for each spectral band (Equation (8)). To assess the estimation accuracy of forest carbon density, the spectral variables for the images after TC were used as the independent variables and the forest carbon density of the measured sample plots was utilized as the dependent variable [3,12,13]. Support vector regression (SVR) was then adopted for modeling, and R 2 and RMSE were employed to evaluate the effects of the moving window sizes on the estimation of forest carbon density.…”
Section: Topographic Correction Considering Local Parameter Estimationmentioning
confidence: 99%
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