IGARSS'97. 1997 IEEE International Geoscience and Remote Sensing Symposium Proceedings. Remote Sensing - A Scientific Vision Fo
DOI: 10.1109/igarss.1997.609209
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Landcover classification over the Mekong river delta using ERS and RADARSAT SAR images

Abstract: Unsupervised classification of the landcover in the rice growing area in the Mekong river delta was performed using a combination of the ERS and RADARSAT SAR data. The ERS SAR is VV polarized while the RADARSAT SAR is HH polarized. The advantages of multiple polarization SAR in landcover classification may be realized using data from these two satellites together. The study area for this work covers the SOC Trang and Bac Lieu provinces of Vietnam where a diversity of rice cropping systems is practiced. Rice cr… Show more

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“…In particular, rice signature interpretation has been proposed based on theoretical models [14,18], and supervised classification algorithms [16] or image ratio methods have been used for rice mapping purposes [14,24]. Another approach for sparse time series is to extract temporal features from the data, such as the minimum, maximum or range of values on a pixel-by-pixel basis, relate those to the known temporal dynamics of the rice crop and use that knowledge to classify areas as rice or non-rice [25].…”
Section: A Summary Of Sar Research and Applications For Rice Mappingmentioning
confidence: 99%
“…In particular, rice signature interpretation has been proposed based on theoretical models [14,18], and supervised classification algorithms [16] or image ratio methods have been used for rice mapping purposes [14,24]. Another approach for sparse time series is to extract temporal features from the data, such as the minimum, maximum or range of values on a pixel-by-pixel basis, relate those to the known temporal dynamics of the rice crop and use that knowledge to classify areas as rice or non-rice [25].…”
Section: A Summary Of Sar Research and Applications For Rice Mappingmentioning
confidence: 99%