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The effects of ecologically determined spatial complexity on the classification accuracy of simulated coral reef images
Authors:Alan Lim  John D Hedley  Peter J Mumby
Affiliation:a Department of Geography, University of Waterloo, 200 University Avenue West, Waterloo, Ontario, Canada N2L 3G1
b Marine Spatial Ecology Lab, School of Biosciences, Hatherly Laboratory, Prince of Wales Road, University of Exeter, Exeter, Devon, EX4 4PS, UK
c Centre for Remote Sensing and Spatial Information Science, School of Geography, Planning and Architecture, University of Queensland, Brisbane, Queensland, 4072, Australia
Abstract:Numerous studies have been conducted to compare the classification accuracy of coral reef maps produced from satellite and aerial imagery with different sensor characteristics such as spatial or spectral resolution, or under different environmental conditions. However, in additional to these physical environment and sensor design factors, the ecologically determined spatial complexity of the reef itself presents significant challenges for remote sensing objectives. While previous studies have considered the spatial resolution of the sensors, none have directly drawn the link from sensor spatial resolution to the scale and patterns in the heterogeneity of reef benthos. In this paper, we will study how the accuracy of a commonly used maximum likelihood classification (MLC) algorithm is affected by spatial elements typical of a Caribbean atoll system present in high spectral and spatial resolution imagery.The results indicate that the degree to which ecologically determined spatial factors influence accuracy is dependent on both the amount of coral cover on the reef and the spatial resolution of the images being classified, and may be a contributing factor to the differences in the accuracies obtained for mapping reefs in different geographical locations. Differences in accuracy are also obtained due to the methods of pixel selection for training the maximum likelihood classification algorithm. With respect to estimation of live coral cover, a method which randomly selects training samples from all samples in each class provides better estimates for lower resolution images while a method biased to select the pixels with the highest substrate purity gave better estimations for higher resolution images.
Keywords:Coral reefs  Classification  Hyperspectral  Accuracy  Size-frequency distribution  Colony clustering  Coral cover
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