Using multilevel remote sensing and ground data to estimate forest biomass resources in remote regions: A case study in the boreal forests of interior Alaska

HE Andersen, J Strunk, H Temesgen… - Canadian Journal of …, 2011 - Taylor & Francis
HE Andersen, J Strunk, H Temesgen, D Atwood, K Winterberger
Canadian Journal of Remote Sensing, 2011Taylor & Francis
The emergence of a new generation of remote sensing and geopositioning technologies, as
well as increased capabilities in image processing, computing, and inferential techniques,
have enabled the development and implementation of increasingly efficient and cost-
effective multilevel sampling designs for forest inventory. In this paper, we (i) describe the
conceptual basis of multilevel sampling,(ii) provide a detailed review of several previously
implemented multilevel inventory designs,(iii) describe several important technical …
The emergence of a new generation of remote sensing and geopositioning technologies, as well as increased capabilities in image processing, computing, and inferential techniques, have enabled the development and implementation of increasingly efficient and cost-effective multilevel sampling designs for forest inventory. In this paper, we (i) describe the conceptual basis of multilevel sampling, (ii) provide a detailed review of several previously implemented multilevel inventory designs, (iii) describe several important technical considerations that can influence the efficiency of a multilevel sampling design, and (iv) demonstrate the application of a modern multilevel sampling approach for estimating the forest biomass resources in a remote area of interior Alaska. This approach utilized a combination of ground plots, lidar strip sampling, satellite imagery (multispectral and radar), and classified land cover information. The variability in the total biomass estimate was assessed using a bootstrapping approach. The results indicated only marginal improvement in the precision of the total biomass estimate when the lidar sample was post-stratified using the classified land cover layer (reduction in relative standard error from 7.3% to 7.0%), whereas there was a substantial improvement in the precision when the estimate was based on the biomass map derived via nearest-neighbor imputation (reduction in relative standard error from 7.3% to 5.1%).
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