Please use this identifier to cite or link to this item: https://www.um.edu.mt/library/oar/handle/123456789/85745
Title: A machine learning approach for automatic land cover mapping from DSLR images over the Maltese Islands
Authors: Gauci, Adam
Abela, John
Austad, M.
Cassar, Louis F.
Zarb Adami, Kristian
Keywords: Machine learning
Pattern perception
Land use mapping -- Malta
Landscape assessment -- Malta
Land cover -- Remote sensing -- Malta
Decision trees
Issue Date: 2018-01
Publisher: Elsevier
Citation: Gauci, A., Abela, J., Austad, M., Cassar, L. F., & Zarb-Adami, K. (2018). A machine learning approach for automatic land cover mapping from DSLR images over the Maltese Islands. Environmental Modelling & Software, 99, 1-10.
Abstract: High resolution raster data for land cover mapping or change analysis are normally acquired through satellite or aerial imagery. Apart from the incurred costs, the available files might not have the required temporal resolution. Moreover, cloud cover and atmospheric absorptions may limit the applicability of existing algorithms or reduce their accuracy. This paper presents a novel technique that is capable of mapping garrigue and/or phrygana vegetation as well as karst or ground-armour terrain in photos captured by a digital camera. By including a reference pattern in every frame, the automated method estimates the total area covered by each land type. Pixel based classification is performed by supervised decision tree methods. Although the intention is not to replace traditional surface cover analysis, the proposed technique allows accurate land cover mapping with quantitative estimates to be obtained. Since no expensive hardware or specialised personnel are required, vegetation monitoring of local sites can be carried out cheaply and frequently. The developed proof of concept is tested on photos taken in thirteen different sites across the Maltese Islands.
URI: https://www.um.edu.mt/library/oar/handle/123456789/85745
Appears in Collections:Scholarly Works - InsESEMP

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