Publication | Closed Access
Deep Recurrent Neural Networks for Winter Vegetation Quality Mapping via Multitemporal SAR Sentinel-1
127
Citations
17
References
2018
Year
Multitemporal Sar Sentinel-1Earth ObservationEngineeringMachine LearningLand CoverTerrestrial SensingEarth ScienceImage AnalysisData ScienceWinter Vegetation QualityForest MeteorologySatellite ImagingMeteorologySynthetic Aperture RadarGeographyDeep Learning TechniquesDeep LearningEarth Observation DataLand Cover MapRadarRemote SensingRadar Image Processing
Mapping winter vegetation quality is a challenging problem in remote sensing. This is due to cloud coverage in winter periods, leading to a more intensive use of radar rather than optical images. The aim of this letter is to provide a better understanding of the capabilities of Sentinel-1 radar images for winter vegetation quality mapping through the use of deep learning techniques. Analysis is carried out on a multitemporal Sentinel-1 data over an area around Charentes-Maritimes, France. This data set was processed in order to produce an intensity radar data stack from October 2016 to February 2017. Two deep recurrent neural network (RNN)-based classifiers were employed. Our work revealed that the results of the proposed RNN models clearly outperformed classical machine learning approaches (support vector machine and random forest).
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