IPEEC - CENPAT   25619
INSTITUTO PATAGONICO PARA EL ESTUDIO DE LOS ECOSISTEMAS CONTINENTALES
Unidad Ejecutora - UE
congresos y reuniones científicas
Título:
SAR Image Segmentation based on Multifractal Features
Autor/es:
PACHECO, CRISTIAN; GAMBINI, JULIANA; DELRIEUX, CLAUDIO
Lugar:
Bahía Blanca
Reunión:
Congreso; 2019 XVIII Workshop on Information Processing and Control (RPIC); 2019
Institución organizadora:
Universidad Nacional del Sur - IIIE CONICET UNS
Resumen:
Synthetic Aperture Radar (SAR) imaging is based on airborne or satellite active microwave sensors that can capture the earth surface by emitting a signal and receiving the backscattered signal that forms the resulting image.Since microwave radiation is not interfered by sunlight and can pass through clouds, SAR imagery can be generated oblivious to weather and daylight conditions.However, the active nature of the imaging process determines that SAR images are contaminated by an inherent {em speckle} noise that may degrade significantly the quality and usefulness of the images, and specific noise-removal processes may also filter out relevant textural information.In this article, we propose a texture-based method that can be applied for region segmentation in SAR imagery.The method is based on local analysis of the multifractal spectrum and a clustering procedure.The outcomes obtained both with synthetic and real SAR images show better region segmentation results than with state-of-the-art proposals.