• DocumentCode
    1353098
  • Title

    Improved Biomass Estimation Using the Texture Parameters of Two High-Resolution Optical Sensors

  • Author

    Nichol, Janet E. ; Sarker, Md Latifur Rahman

  • Author_Institution
    Dept. of Land Surveying & Geo-Inf., Hong Kong Polytech. Univ., Kowloon, China
  • Volume
    49
  • Issue
    3
  • fYear
    2011
  • fDate
    3/1/2011 12:00:00 AM
  • Firstpage
    930
  • Lastpage
    948
  • Abstract
    Accurate forest biomass estimation is essential for greenhouse gas inventories, terrestrial carbon accounting, and climate change modeling studies. Unfortunately, no universal and transferable technique has been developed so far to quantify biomass carbon sources and sinks over large areas because of the environmental, topographic, and biophysical complexity of forest ecosystems. Among the remote sensing techniques tested, the use of multisensors and the spatial as well as the spectral characteristics of the data have demonstrated a strong potential for forest biomass estimation. However, the use of multisensor data accompanied by spatial data processing has not been fully investigated because of the unavailability of appropriate data sets and the complexity of image processing techniques in combining multisensor data with the analysis of the spatial characteristics. This paper investigates the texture parameters of two high resolution (10 m) optical sensors (Advanced Visible and Near Infrared Radiometer type 2 (AVNIR-2) and SPOT-5) in different processing combinations for biomass estimation. Multiple regression models are developed between image parameters extracted from the different stages of image processing and the biomass of 50 field plots, which was estimated using a newly developed "allometric model" for the study region. The results demonstrate a clear improvement in biomass estimation using the texture parameters of a single sensor (r2 = 0.854 and rmse = 38.54) compared to the best result obtained from simple spectral reflectance (r2 = 0.494) and simple spectral band ratios (r2 = 0.59). This was further improved to obtain a very promising result using the texture parameter of both sensors together (r2 = 0.897 and rmse = 32.38), the texture parameters from the principal component analysis of both sensors (r2 = 0.851 and rmse = 38.80), and the texture parameters from the av eraging of both sensors (r2 = - - 0.911 and rmse = 30.10). Improvement was also observed using the simple ratio of the texture parameters of AVNIR-2 (r2 = 0.899 and rmse = 32.04) and SPOT-5 (r2 = 0.916), and finally, the most promising result (r2 = 0.939 and rmse = 24.77) was achieved using the ratios of the texture parameters of both sensors together. This high level of agreement between the field and image data derived from the two novel techniques (i.e., combination/fusion of the multisensor data and the ratio of the texture parameters) is a very significant improvement over previous work where agreement not exceeding r2 = 0.65 has been achieved using optical sensors. Furthermore, biomass estimates of up to 500 t/ha in our study area far exceed the saturation levels observed in other studies using optical sensors.
  • Keywords
    ecology; geophysical image processing; principal component analysis; regression analysis; vegetation mapping; AVNIR-2 instrument; SPOT-5 instrument; allometric model; biophysical complexity; climate change modeling; environmental complexity; forest biomass estimation; forest ecosystem; greenhouse gas inventory; image processing technique; multiple regression model; multisensor; optical sensor; principal component analysis; saturation level; terrestrial carbon accounting; texture parameter; topographic complexity; Biomass estimation; multisensors; texture measurement;
  • fLanguage
    English
  • Journal_Title
    Geoscience and Remote Sensing, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    0196-2892
  • Type

    jour

  • DOI
    10.1109/TGRS.2010.2068574
  • Filename
    5604312