Publication | Open Access
Aerial Spectral Super-Resolution using Conditional Adversarial Networks
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2017
Year
EngineeringMultispectral ImagingNatural ImagesImage AnalysisInverse MappingData SciencePattern RecognitionSingle-image Super-resolutionVideo Super-resolutionSynthetic Image GenerationMachine VisionSynthetic Aperture RadarImaging SpectroscopySpectral ImagingGeographyDeep LearningComputer VisionSpectral SignaturesHyperspectral ImagingGenerative Adversarial NetworkAerospace EngineeringAerial Spectral Super-resolutionRemote Sensing
Inferring spectral signatures from ground based natural images has acquired a lot of interest in applied deep learning. In contrast to the spectra of ground based images, aerial spectral images have low spatial resolution and suffer from higher noise interference. In this paper, we train a conditional adversarial network to learn an inverse mapping from a trichromatic space to 31 spectral bands within 400 to 700 nm. The network is trained on AeroCampus, a first of its kind aerial hyperspectral dataset. AeroCampus consists of high spatial resolution color images and low spatial resolution hyperspectral images (HSI). Color images synthesized from 31 spectral bands are used to train our network. With a baseline root mean square error of 2.48 on the synthesized RGB test data, we show that it is possible to generate spectral signatures in aerial imagery.