Characterizing forest succession with lidar data: An evaluation for the Inland Northwest, USA

Michael J. Falkowski, Jeffrey S. Evans, Sebastian Martinuzzi, Paul E. Gessler, Andrew T. Hudak

Research output: Contribution to journalArticlepeer-review

269 Scopus citations

Abstract

Quantifying forest structure is important for sustainable forest management, as it relates to a wide variety of ecosystem processes and services. Lidar data have proven particularly useful for measuring or estimating a suite of forest structural attributes such as canopy height, basal area, and LAI. However, the potential of this technology to characterize forest succession remains largely untested. The objective of this study was to evaluate the use of lidar data for characterizing forest successional stages across a structurally diverse, mixed-species forest in Northern Idaho. We used a variety of lidar-derived metrics in conjunction with an algorithmic modeling procedure (Random Forests) to classify six stages of three-dimensional forest development and achieved an overall accuracy > 95%. The algorithmic model presented herein developed ecologically meaningful classifications based upon lidar metrics quantifying mean vegetation height and canopy cover, among others. This study highlights the utility of lidar data for accurately classifying forest succession in complex, mixed coniferous forests; but further research should be conducted to classify forest successional stages across different forests types. The techniques presented herein can be easily applied to other areas. Furthermore, the final classification map represents a significant advancement for forest succession modeling and wildlife habitat assessment.

Original languageEnglish (US)
Pages (from-to)946-956
Number of pages11
JournalRemote Sensing of Environment
Volume113
Issue number5
DOIs
StatePublished - May 15 2009

Bibliographical note

Funding Information:
This work was primarily supported through Agenda 2020's sustainable forestry initiative via a grant provided by the USDA Forest Service Rocky Mountain Research Station, Moscow Forest Sciences Laboratory (RJVA-11222063-299). The authors would like to acknowledge multiple additional sources of funding and support for this work including: the USDA Forest Service Rocky Mountain Research Station Missoula Fire Sciences Laboratory (RJVA-11222048-140), the NASA Synergy program, the United States Geological Survey's GAP Analysis Program, the USDA Forest Service International Institute of Tropical Forestry, and the University of Idaho's Geospatial Laboratory for Environmental Dynamics. We also thank four anonymous reviewers for their input and comments on an earlier version of this manuscript.

Keywords

  • Forest structure
  • Forest succession
  • Lidar
  • Random forests
  • Wildlife

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