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    Computation of Lacunarity from Covariance of Spatial Binary Maps

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    91403_supplement.pdf (17.70Mb)
    Access Status
    Open access
    Authors
    Hingee, K.
    Baddeley, Adrian
    Caccetta, P.
    Nair, G.
    Date
    2019
    Type
    Journal Article
    
    Metadata
    Show full item record
    Citation
    Hingee, K. and Baddeley, A. and Caccetta, P. and Nair, G. 2019. Computation of Lacunarity from Covariance of Spatial Binary Maps. Journal of Agricultural, Biological, and Environmental Statistics. 24 (2): pp. 264-288.
    Source Title
    Journal of Agricultural, Biological, and Environmental Statistics
    DOI
    10.1007/s13253-019-00351-9
    ISSN
    1085-7117
    Faculty
    Faculty of Health Sciences
    School
    Curtin School of Population Health
    Funding and Sponsorship
    http://purl.org/au-research/grants/arc/DP130104470
    URI
    http://hdl.handle.net/20.500.11937/91579
    Collection
    • Curtin Research Publications
    Abstract

    We consider a spatial binary coverage map (binary pixel image) which might represent the spatial pattern of the presence and absence of vegetation in a landscape. ‘Lacunarity’ is a generic term for the nature of gaps in the pattern: a popular choice of summary statistic is the ‘gliding-box lacunarity’ (GBL) curve. GBL is potentially useful for quantifying changes in vegetation patterns, but its application is hampered by a lack of interpretability and practical difficulties with missing data. In this paper we find a mathematical relationship between GBL and spatial covariance. This leads to new estimators of GBL that tolerate irregular spatial domains and missing data, thus overcoming major weaknesses of the traditional estimator. The relationship gives an explicit formula for GBL of models with known spatial covariance and enables us to predict the effect of changes in the pattern on GBL. Using variance reduction methods for spatial data, we obtain statistically efficient estimators of GBL. The techniques are demonstrated on simulated binary coverage maps and remotely sensed maps of local-scale disturbance and meso-scale fragmentation in Australian forests. Results show in some cases a fourfold reduction in mean integrated squared error and a twentyfold reduction in sensitivity to missing data. Supplementary materials accompanying the paper appear online and include a software implementation in the R language.

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