Compressive Source Separation: Theory And Methods For Hyperspectral Imaging

IEEE transactions on image processing : a publication of the IEEE Signal Processing Society(2013)

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摘要
We propose and analyze a new model for hyperspectral images (HSIs) based on the assumption that the whole signal is composed of a linear combination of few sources, each of which has a specific spectral signature, and that the spatial abundance maps of these sources are themselves piecewise smooth and therefore efficiently encoded via typical sparse models. We derive new sampling schemes exploiting this assumption and give theoretical lower bounds on the number of measurements required to reconstruct HSI data and recover their source model parameters. This allows us to segment HSIs into their source abundance maps directly from compressed measurements. We also propose efficient optimization algorithms and perform extensive experimentation on synthetic and real datasets, which reveals that our approach can be used to encode HSI with far less measurements and computational effort than traditional compressive sensing methods.
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关键词
Compressed sensing,source separation,hyperspectral image,linear mixture model,sparsity,proximal splitting method
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