Object-Based Greenhouse Horticultural Crop Identification from Multi-Temporal Satellite Imagery: A Case Study in Almeria, Spain
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Manuel A. Aguilar | Fernando J. Aguilar | Andrés García Lorca | Claudio Parente | Andrea Vallario | M. A. Aguilar | F. Aguilar | C. Parente | A. G. Lorca | A. Vallario
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