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Multihypothesis prediction for compressed sensing and super-resolution of images

Posted on:2013-04-24Degree:M.SType:Thesis
University:Mississippi State UniversityCandidate:Chen, ChenFull Text:PDF
GTID:2458390008468193Subject:Engineering
Abstract/Summary:PDF Full Text Request
A process for the use of multihypothesis prediction in the reconstruction of images is proposed for use in both compressed-sensing reconstruction as well as single-image super-resolution. Specifically, for compressed-sensing reconstruction of a single still image, multiple predictions for an image block are drawn from spatially surrounding blocks within an initial non-predicted reconstruction. The predictions are used to generate a residual in the domain of the compressed-sensing random projections. This residual being typically more compressible than the original signal leads to improved compressed-sensing reconstruction quality. To appropriately weight the hypothesis predictions, a Tikhonov regularization to an ill-posed least-squares optimization is proposed. An extension of this framework is applied to the compressed-sensing reconstruction of hyperspectral imagery is also studied. Finally, the multihypothesis paradigm is employed for single-image super-resolution wherein each patch of a low-resolution image is represented as a linear combination of spatially surrounding hypothesis patches.
Keywords/Search Tags:Image, Multihypothesis, Super-resolution, Reconstruction, Compressed-sensing
PDF Full Text Request
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