An automated approach for extracting Barrier Island morphology from digital elevation models
Document Type
Article
Publication Date
2016
Publication Title
Geomorphology
Volume
262
First Page
1
Keywords
Barrier Island, Coastal dunes, Dune recovery, GIS
Last Page
7
Abstract
The response and recovery of a barrier island to extreme storms depends on the elevation of the dune base and crest, both of which can vary considerably alongshore and through time. Quantifying the response to and recovery from storms requires that we can first identify and differentiate the dune(s) from the beach and back-barrier, which in turn depends on accurate identification and delineation of the dune toe, crest and heel. The purpose of this paper is to introduce a multi-scale automated approach for extracting beach, dune (dune toe, dune crest and dune heel), and barrier island morphology. The automated approach introduced here extracts the shoreline and back-barrier shoreline based on elevation thresholds, and extracts the dune toe, dune crest and dune heel based on the average relative relief (RR) across multiple spatial scales of analysis. The multi-scale automated RR approach to extracting dune toe, dune crest, and dune heel based upon relative relief is more objective than traditional approaches because every pixel is analyzed across multiple computational scales and the identification of features is based on the calculated RR values. The RR approach out-performed contemporary approaches and represents a fast objective means to define important beach and dune features for predicting barrier island response to storms. The RR method also does not require that the dune toe, crest, or heel are spatially continuous, which is important because dune morphology is likely naturally variable alongshore. © 2016 Elsevier B.V.
DOI
10.1016/j.geomorph.2016.02.024
Recommended Citation
Wernette, P.; Houser, Chris; and Bishop, M.P.. (2016). An automated approach for extracting Barrier Island morphology from digital elevation models. Geomorphology, 262, 1-7.
https://scholar.uwindsor.ca/environmentalsciencepub/30