• DocumentCode
    17706
  • Title

    Improvement of Forest Carbon Estimation by Integration of Regression Modeling and Spectral Unmixing of Landsat Data

  • Author

    Enping Yan ; Hui Lin ; Guangxing Wang ; Hua Sun

  • Author_Institution
    Res. Center of Forest Remote Sensing & Inf. Eng., Central South Univ. of Forestry & Technol., Changsha, China
  • Volume
    12
  • Issue
    9
  • fYear
    2015
  • fDate
    Sept. 2015
  • Firstpage
    2003
  • Lastpage
    2007
  • Abstract
    Accurately mapping forest carbon density by combining sample plots and remotely sensed images has become popular because this method provides spatially explicit estimates. However, mixed pixels often impede the improvement of the estimation. In this letter, regression modeling and spectral unmixing analysis were integrated to improve the estimation of forest carbon density for the You County of Hunan, China, using Landsat Thematic Mapper images. Linear spectral unmixing with and without a constraint (LSUWC and LSUWOC) and nonlinear spectral unmixing (NSU) were compared to derive the fractions of five endmembers, particularly forests. Stepwise regression, logistic regression, and polynomial regression (PR) with and without the forest fraction used as an independent variable and the product of the forest fraction image and the map from the best model without the forest fraction were compared. The models were developed using 56 sample plots, and their results were validated using 26 test plots. The decomposition of mixed pixels was assessed using higher spatial resolution SPOT images and a corresponding land cover map. The results showed that 1) LSUWC more accurately estimated the endmember fractions than LSUWOC and NSU, 2) PR had the greatest estimation accuracy of forest carbon, and 3) combining regression modeling and spectral unmixing increased the estimation accuracy by 31%-39%, and introducing the forest fraction into the regressions performed better than the product of forest fraction image and the results from PR without the fraction. This implied that the integrations provided great potential in reducing the impacts of mixed pixels in mapping forest carbon.
  • Keywords
    atmospheric techniques; carbon capture and storage; estimation theory; mixing; polynomials; regression analysis; vegetation mapping; China; Hunan; LSUWC; LSUWOC; Landsat thematic mapper images; NSU; You county; carbon density; endmember fractions; forest carbon density; forest carbon estimation; forest carbon mapping; forest fraction image product; integrations; land cover map; logistic regression; mixed pixel decomposition; mixed pixels; nonlinear spectral unmixing; polynomial regression; regression model; spatial resolution SPOT images; spatially explicit estimates; spectral Landsat data unmixing; stepwise regression; Accuracy; Biomass; Carbon; Earth; Estimation; Remote sensing; Satellites; Accuracy improvement; Landsat Thematic Mapper (TM); forest carbon density; integration; regression; spectral unmixing;
  • fLanguage
    English
  • Journal_Title
    Geoscience and Remote Sensing Letters, IEEE
  • Publisher
    ieee
  • ISSN
    1545-598X
  • Type

    jour

  • DOI
    10.1109/LGRS.2015.2451091
  • Filename
    7161282