Detecting wind disturbance severity and canopy heterogeneity in boreal forest by coupling high-spatial resolution satellite imagery and field data

Roy L. Rich, Lee E. Frelich, Peter B. Reich, Marvin E. Bauer

    Research output: Contribution to journalArticle

    41 Citations (Scopus)

    Abstract

    Wind disturbance events can impact spatially heterogeneous patterns in vegetation structure and disturbance severity in forested landscapes. Characterizing these patterns in forested ecosystems with remote sensing data has been a persistent challenge as variation in severity may be heterogeneous at fine spatial scales. Yet the degree and pattern of disturbance severity are an important influence on successional dynamics. This study explored how spectral and textural characteristics of high-spatial resolution IKONOS imagery reflected patterns of disturbance severity across a windstorm damaged, 121-km2 area of the Boundary Waters Canoe Area Wilderness (BWCAW) in northeastern Minnesota, USA. In this study, spectral and spatial features of high-spatial resolution (1-m panchromatic and 4-m multispectral) IKONOS satellite imagery from a single post-disturbance date are coupled with field observations of disturbance within 0.045-ha field plots to access the potential for empirically modeling disturbance severity across this heterogeneous landscape within the BWCAW. Combining textural and spectral features led to a multiple regression model that explained 68% of the variance, and predicted disturbance severity equally well for ground data not included in the model development. The results suggest the utility of combining spatial and spectral data for detecting differences in forest structure caused by ecological processes such as disturbance.
    Original languageEnglish
    Number of pages10
    JournalRemote Sensing of Environment
    Publication statusPublished - 2010

    Open Access - Access Right Statement

    Copyright © 2009 Elsevier Inc. All rights reserved

    Keywords

    • Boundary Waters Canoe Area Wilderness (Minn.)
    • boreal forest
    • image texture
    • remote sensing
    • spatial hetereogeneity
    • wind disturbance

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