2016
DOI: 10.4236/gep.2016.47011
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Developing an Automated Land Cover Classifier Using LiDAR and High Resolution Aerial Imagery

Abstract: The aim of this project is to create high resolution land cover classification as well as tree canopy density maps at a regional level using high resolution spatial data. Modeling and the data manipulation and analysis of LiDAR LAS point cloud dataset as well as multispectral aerial photographs from the National Agriculture Imagery Program (NAIP) were carried out. Using geoprocessing modeling, a land cover map is created based on filtered returns from LiDAR point cloud data (LAS dataset) to extract features ba… Show more

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