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Mapping invasive woody species in coastal dunes in the N etherlands: a remote sensing approach using LIDAR and high‐resolution aerial photographs
Author(s) -
Hantson Wouter,
Kooistra Lammert,
Slim Pieter A.
Publication year - 2012
Publication title -
applied vegetation science
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.096
H-Index - 64
eISSN - 1654-109X
pISSN - 1402-2001
DOI - 10.1111/j.1654-109x.2012.01194.x
Subject(s) - lidar , remote sensing , vegetation (pathology) , multispectral image , shrub , vegetation classification , object based , aerial photography , environmental science , geography , ecology , object (grammar) , computer science , artificial intelligence , biology , medicine , pathology
Abstract Questions Does remote sensing improve classification of invasive woody species in dunes, useful for shrub management? Does additional height information and an object‐based classifier increase woody species classification accuracy? Location The dunes of V lieland, one of the W adden S ea I slands, the N etherlands. Methods Extensive monitoring using optical remote sensing and LIDAR deliver large amounts of high‐quality data to observe and manage coastal dunes as a defence against the sea in the N etherlands. Using these additional data could increase the accuracy of vegetation mapping and monitoring in coastal areas. In this study, a remote sensing approach has been developed to deliver detailed and standardized maps of (invasive) woody species in the dunes of V lieland using multispectral aerial photographs and vegetation height derived from LIDAR . Three classification methods were used: maximum likelihood ( ML ) classification using aerial photographs, ML classification combined with vegetation heights derived from LIDAR ( ML +) and object‐based ( OB ) classification. Results The use of vegetation height from the LIDAR data increased the overall classification accuracy from 39% to 50%, but particularly improved classification of the taller woody species. The object‐based classification increased the overall accuracy of the ML + from 50% to 60%. The object‐based results are comparable to human visual analysis while offering automated analysis. Conclusions Overall, the object‐based classification delivers detailed maps of the woody species that are useful for management and evaluation of alien and invasive species in dune ecosystems.