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Classifying unresolved objects from simulated space data.
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1973
Year
Precision AgricultureEnvironmental MonitoringMachine LearningEngineeringUnresolved ObjectsTerrestrial SensingEarth ScienceSocial SciencesClassification MethodData ScienceData MiningPattern RecognitionSpatial ResolutionSatellite ImagingCartographyMachine VisionSpacecraft ScannersSynthetic Aperture RadarGeographySpatial Data AcquisitionSpace-time SimulationComputer ScienceFlight AltitudeLand Cover MapRadarRemote SensingData Modeling
A multispectral scanner data set gathered at a flight altitude of 10,000 ft. over an agricultural area was modified to simulate the spatial resolution of the spacecraft scanners. Signatures were obtained for several major crops and their proportions were estimated over a large area. For each crop, a map was generated to show its approximate proportion in each resolution element, and hence its distribution over the area of interest. A statistical criterion was developed to identify data points that may not represent a mixture of the specified crops. This allows for great reduction in the effect of unknown or alien objects on the estimated proportions. This criterion can be used to locate special features, such as roads or farm houses. Preliminary analysis indicates a high level of consistency between estimated proportions and available ground truth. Large concentrations of major crops show up especially well on the maps.