• Title of article

    Characterizing vertical forest structure using small-footprint airborne LiDAR

  • Author/Authors

    Zimble، نويسنده , , Daniel A. and Evans، نويسنده , , David L. and Carlson، نويسنده , , George C. and Parker، نويسنده , , Robert C. and Grado، نويسنده , , Stephen C. and Gerard، نويسنده , , Patrick D.، نويسنده ,

  • Issue Information
    روزنامه با شماره پیاپی سال 2003
  • Pages
    12
  • From page
    171
  • To page
    182
  • Abstract
    Characterization of forest attributes at fine scales is necessary to manage terrestrial resources in a manner that replicates, as closely as possible, natural ecological conditions. In forested ecosystems, management decisions are driven by variables such as forest composition, forest structure (both vertical and horizontal), and other ancillary data (i.e., topography, soils, slope, aspect, and disturbance regime dynamics). Vertical forest structure is difficult to quantify and yet is an important component in the decision-making process. This study investigated the use of light detection and ranging (LiDAR) data for classifying this attribute at landscape scales for inclusion into decision-support systems. Analysis of field-derived tree height variance demonstrated that this metric could distinguish between two classes of vertical forest structure. Analysis of LiDAR-derived tree height variance demonstrated that differences between single-story and multistory vertical structural classes could be detected. Landscape-scale classification of the two structure classes was 97% accurate. This study suggested that within forest types of the Intermountain West region of the United States, LiDAR-derived tree heights could be useful in the detection of differences in the continuous, nonthematic nature of vertical structure forest with acceptable accuracies.
  • Keywords
    Remote sensing , Tree measurement , LIDAR , Forest structure , Intermountain West
  • Journal title
    Remote Sensing of Environment
  • Serial Year
    2003
  • Journal title
    Remote Sensing of Environment
  • Record number

    1574265