• DocumentCode
    61996
  • Title

    Multivariate Spatial Regression Models for Predicting Individual Tree Structure Variables Using LiDAR Data

  • Author

    Babcock, Carl ; Matney, J. ; Finley, A.O. ; Weiskittel, A. ; Cook, B.D.

  • Author_Institution
    Dept. of Geogr., Michigan State Univ., East Lansing, MI, USA
  • Volume
    6
  • Issue
    1
  • fYear
    2013
  • fDate
    Feb. 2013
  • Firstpage
    6
  • Lastpage
    14
  • Abstract
    This study assesses univariate and multivariate spatial regression models for predicting individual tree structure variables using Light Detection And Ranging (LiDAR) covariates. Many studies have used covariates derived from LiDAR to help explain the variability in tree, stand, or forest variables at a fine spatial resolution across a specified domain. Few studies use regression models capable of accommodating residual spatial dependence between field measurements. Failure to acknowledge this spatial dependence can result in biased and perhaps misleading inference about the importance of LiDAR covariates and erroneous prediction. Accommodating residual spatial dependence, via spatial random effects, helps to meet basic model assumptions and, as illustrated in this study, can improve model fit and prediction. When multiple correlated tree structure variables are considered, it is attractive to specify joint models that are able to estimate the within tree covariance structure and use it for subsequent prediction for unmeasured trees. We capture within tree residual covariances by specifying a model with multivariate spatial random effects. The univariate and multivariate spatial random effects models are compared to those without random effects using a data set collected on the U.S. Forest Service Penobscot Experimental Forest, Maine. These data comprise individual tree measurements including geographic position, height, average crown length, average crown radius, and diameter at breast height.
  • Keywords
    covariance analysis; forestry; optical radar; regression analysis; remote sensing by laser beam; vegetation; LiDAR covariates; LiDAR data; Maine; US Forest Service Penobscot Experimental Forest; USA; forest variable; individual tree structure variable prediction; light detection and ranging; multiply correlated tree structure variables; multivariate spatial regression models; residual covariances; residual spatial dependence; spatial random effects; stand variable; tree covariance structure; tree variable; Biological system modeling; Covariance matrix; Data models; Laser radar; Predictive models; Regression tree analysis; Vegetation; Bayesian; Gaussian process; LiDAR; MCMC; forestry; spatial random effects;
  • fLanguage
    English
  • Journal_Title
    Selected Topics in Applied Earth Observations and Remote Sensing, IEEE Journal of
  • Publisher
    ieee
  • ISSN
    1939-1404
  • Type

    jour

  • DOI
    10.1109/JSTARS.2012.2215582
  • Filename
    6339017