Record Details

Influence of lidar, Landsat imagery, disturbance history, plot location accuracy, and plot size on accuracy of imputation maps of forest composition and structure

ScholarsArchive at Oregon State University

Field Value
Title Influence of lidar, Landsat imagery, disturbance history, plot location accuracy, and plot size on accuracy of imputation maps of forest composition and structure
Names Zald, Harold S. J. (creator)
Ohmann, Janet L. (creator)
Roberts, Heather M. (creator)
Gregory, Matthew J. (creator)
Henderson, Emilie B. (creator)
McGaughey, Robert J. (creator)
Braaten, Justin (creator)
Date Issued 2014-03-05 (iso8601)
Note To the best of our knowledge, one or more authors of this paper were federal employees when contributing to this work. This is the publisher’s final pdf. The published article is copyrighted by Elsevier and can be found at: http://www.journals.elsevier.com/remote-sensing-of-environment/.
Abstract This study investigated how lidar-derived vegetation indices, disturbance history from Landsat time series (LTS)
imagery, plot location accuracy, and plot size influenced accuracy of statistical spatial models (nearest-neighbor
imputation maps) of forest vegetation composition and structure. Nearest-neighbor (NN) imputation maps were
developed for 539,000 ha in the central Oregon Cascades, USA. Mapped explanatory data included tasseled-cap
indices and disturbance history metrics (year, magnitude, and duration of disturbance) from LTS imagery, lidar-derived
vegetation metrics, climate, topography, and soil parent material. Vegetation data from USDA Forest
Service forest inventory plots was summarized at two plot sizes (plot and subplot) and geographically located
with two levels of accuracy (standard and improved). Maps of vegetation composition and structure were
developed with the Gradient Nearest Neighbor (GNN) method of NN imputation using different combinations
of explanatory variables, plot spatial resolution, and plot positional accuracy. Lidar vegetation indices greatly
improved predictions of live tree structure, moderately improved predictions of snag density and down wood
volume, but did not consistently improve species predictions. LTS disturbance metrics improved predictions of
forest structure, but not to the degree of lidar indices, while also improving predictions of many species. Absence
of disturbance attribution (i.e. disturbance type such as fire or timber harvest) in LTS disturbance metrics may
have limited our ability to predict forest structure. Absence of corrected lidar intensity values may also have
lowered accuracy of snag and species predictions. However, LTS disturbance attribution and lidar corrected
intensity values may not be able to overcome fundamental limitations of remote sensing for predicting snags
and down wood that are obscured by the forest canopy. Improved GPS plot locations had little influence on
map accuracy, and we suggest under what conditions improved GPS plot locations may or may not improve
the accuracy of predictive maps that link remote sensing with forest inventory plots. Subplot NN imputation
maps had much lower accuracy compared to maps generated using response variables from larger whole
plots. No single map had optimal results for every mapped variable, suggesting map users and developers
need to prioritize what forest vegetation attributes are most important for any given map application.
Genre Article
Topic Lidar
Identifier Zald, H. S. J., Ohmann, J. L., Roberts, H. M., Gregory, M. J., Henderson, E. B., McGaughey, R. J., & Braaten, J. (2014). Influence of lidar, Landsat imagery, disturbance history, plot location accuracy, and plot size on accuracy of imputation maps of forest composition and structure. Remote Sensing of Environment, 143, 26-38. doi:10.1016/j.rse.2013.12.013

© Western Waters Digital Library - GWLA member projects - Designed by the J. Willard Marriott Library - Hosted by Oregon State University Libraries and Press