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Large area forest inventory using Landsat ETM+: A geostatistical approach
Authors:Qingmin Meng  Chris Cieszewski  Marguerite Madden
Institution:1. Rubber Research Institute, Chinese Academy of Tropical Agriculture Sciences, Danzhou, Hainan 571737, China;2. College of Resources and Environment, Southwest University, Chongqing 400716, China;3. Hainan Agricultural Reclamation Academy of Sciences, Haikou 570206, China;1. INRA, US1106 Unité Infosol, F-45000 Orléans, France;2. Faculty of Agriculture and Environment, The University of Sydney, 1 Central Avenue, Australia Technology Park, Eveleigh, NSW 2015, Australia;3. Department of Geography, College of Life and Environmental Sciences, University of Exeter, Amory building — room 431, Rennes Drive, EX4 4RJ Exeter, UK
Abstract:Large area forest inventory is important for understanding and managing forest resources and ecosystems. Remote sensing, the Global Positioning System (GPS), and geographic information systems (GIS) provide new opportunities for forest inventory. This paper develops a new systematic geostatistical approach for predicting forest parameters, using integrated Landsat 7 Enhanced Thematic Mapper Plus (ETM+) images, GPS, and GIS. Forest parameters, such as basal area, height, health conditions, biomass, or carbon, can be incorporated as a response variable, and the geostatistical approach can be used to predict parameter values for uninventoried points. Using basal area as the response and Landsat ETM+ images of pine stands in Georgia as auxiliary data, this approach includes univariate kriging (ordinary kriging and universal kriging) and multivariable kriging (co-kriging and regression kriging). The combination of bands 4, 3, and 2, as well as the combination of bands 5, 4, and 3, normalized difference vegetation index (NDVI), and principal components (PCs) were used in this study with co-kriging and regression kriging. Validation based on 200 randomly sampling points withheld field inventory was computed to evaluate the kriging performance and demonstrated that band combination 543 performed better than band combination 432, NDVI, and PCs. Regression kriging resulted in the smallest errors and the highest R-squared indicating the best geostatistical method for spatial predictions of pine basal area.
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