Land cover classification of VHR airborne images for citrus grove identification |
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Authors: | J. Amoró s Ló pez,E. Izquierdo VerdiguierL. Gó mez Chova,J. Muñ oz Marí J.Z. Rodrí guez Barreiro,G. Camps VallsJ. Calpe Maravilla |
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Affiliation: | a Image Processing Laboratory, Universidad de Valencia, Parque Científico, E-46071, Paterna (Valencia), Spainb Instituto Cartográfico Valenciano, Santos Justo y Pastor, 116, E-46022, Valencia, Spain |
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Abstract: | Managing land resources using remote sensing techniques is becoming a common practice. However, data analysis procedures should satisfy the high accuracy levels demanded by users (public or private companies and governments) in order to be extensively used. This paper presents a multi-stage classification scheme to update the citrus Geographical Information System (GIS) of the Comunidad Valenciana region (Spain). Spain is the first citrus fruit producer in Europe and the fourth in the world. In particular, citrus fruits represent 67% of the agricultural production in this region, with a total production of 4.24 million tons (campaign 2006-2007). The citrus GIS inventory, created in 2001, needs to be regularly updated in order to monitor changes quickly enough, and allow appropriate policy making and citrus production forecasting. Automatic methods are proposed in this work to facilitate this update, whose processing scheme is summarized as follows. First, an object-oriented feature extraction process is carried out for each cadastral parcel from very high spatial resolution aerial images (0.5 m). Next, several automatic classifiers (decision trees, artificial neural networks, and support vector machines) are trained and combined to improve the final classification accuracy. Finally, the citrus GIS is automatically updated if a high enough level of confidence, based on the agreement between classifiers, is achieved. This is the case for 85% of the parcels and accuracy results exceed 94%. The remaining parcels are classified by expert photo-interpreters in order to guarantee the high accuracy demanded by policy makers. |
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Keywords: | Tree identification Feature extraction/selection Classification tree Support vector machine Artificial neural networks |
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