This study was the first to use high-resolution IKONOS imagery to classify vegetation communities on sub-Antarctic Heard Island. We focused on the use of texture measures, in addition to standard multispectral information, to improve the classification of sub-Antarctic vegetation communities. Heard Island’s pristine and rapidly changing environment makes it a relevant and exciting location to study the regional effects of climate change. This study uses IKONOS imagery to provide automated, up-to-date, and non-invasive means to map vegetation as an important indicator for environmental change. Three classification techniques were compared: multispectral classification, texture based classification, and a combination of both. Texture features were calculated using the Grey Level Co-occurrence Matrix (GLCM). We investigated the effect of the texture window size on classification accuracy. The combined approach produced a higher accuracy than using multispectral bands alone. It was also found that the selection of GLCM texture features is critical. The highest accuracy (85%) was produced using all original spectral bands and three uncorrelated texture features. Incorporating texture improved classification accuracy by 6%.
History
Publication title
International Journal of Applied Earth Observation and Geoinformation
Volume
12
Pagination
138-149
ISSN
1569-8432
Department/School
School of Geography, Planning and Spatial Sciences
Publisher
Elsevier
Place of publication
Netherlands
Rights statement
The definitive version is available at http://www.sciencedirect.com
Repository Status
Restricted
Socio-economic Objectives
Assessment and management of coastal and estuarine ecosystems