Title of article :
Enhanced detection of the coral Acropora cervicornis from satellite imagery using a textural operator
Author/Authors :
Purkis، نويسنده , , Samuel J. and Myint، نويسنده , , Soe W. and Riegl، نويسنده , , Bernhard M.، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2006
Abstract :
The strength of a texture-based classification lies in the fact that it detects spatial patterning as a function of spectral variation within a particular facies class, as opposed to spectral consistency which drives standard probability-driven image classifiers. Following this premise, the Moranʹs I spatial autocorrelation metric was proven to return values which differed significantly for areas characterised by dense interlocking thickets of the coral Acropora cervicornis versus areas populated by a sparse mixed coral assemblage dominated by Montastrea annularis. The different behaviour of the metric was sufficient to facilitate spatial discrimination of the two assemblages using a supervised classifier with accuracies that surpass the level of prediction offered by standard spectral-based methods. Discrimination was optimum when autocorrelation was evaluated within a moving window with side-lengths ranging between circa. 30–70 m. The discrimination ability is postulated to be linked to intrinsic differences in the spatial-patterning of the two assemblages at scales of tens of metres. The observed patterning can be further related to the growth form and architecture of the differing coral assemblages. The study demonstrates the potential of using kernel-based autocorrelation metrics in unison with satellite data and offers a pertinent tool for monitoring ecologically important coral assemblages that are statistically indistinct using traditional spectral methods.
Keywords :
Acropora cervicornis , Coral reef , Texture , IKONOS , spatial autocorrelation
Journal title :
Remote Sensing of Environment
Journal title :
Remote Sensing of Environment