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Improved reflectance retrieval from hyper- and multispectral imagery without prior scene or sensor information
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2006
Year
EngineeringAverage ReflectanceMultispectral ImagingReflectance RetrievalEarth ScienceQuick Atmospheric CorrectionImage AnalysisPattern RecognitionAtmospheric ScienceAccurate ReflectanceReflectance ModelingMachine VisionSensor InformationImaging SpectroscopyMultispectral ImagerySpectral ImagingGeographyRadiation MeasurementComputer VisionHyperspectral ImagingSpectroscopyRemote SensingLand Surface Reflectance
We describe improvements to a recently developed VNIR-SWIR atmospheric correction method for hyper- and multispectral imagery, dubbed QUAC (QUick Atmospheric Correction). It determines the atmospheric compensation parameters directly from the information contained within the scene using the observed pixel spectra. The newest implementation of QUAC is based on the assumption that the average reflectance of a collection of diverse material spectra, such as the endmember spectra in a scene, is effectively scene independent. This enables the retrieval of reasonably accurate reflectance spectra even when the sensor does not have a proper radiometric or wavelength calibration, or when the solar illumination intensity is unknown. The computational speed of the atmospheric correction method is significantly faster than for the first-principles methods, making it potentially suitable for real-time applications on aircraft and spacecraft. QUAC is applied to a diverse collection of hyper- and multispectral data sets and the results are compared to those obtained with the physics-based atmospheric correction code FLAASH (Fast Line of sight Atmospheric Analysis of Spectral Hypercubes).