2017
DOI: 10.1587/transinf.2016edp7322
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Hierarchical Sparse Bayesian Learning with Beta Process Priors for Hyperspectral Imagery Restoration

Abstract: SUMMARYRestoration is an important area in improving the visual quality, and lays the foundation for accurate object detection or terrain classification in image analysis. In this paper, we introduce Beta process priors into hierarchical sparse Bayesian learning for recovering underlying degraded hyperspectral images (HSI), including suppressing the various noises and inferring the missing data. The proposed method decomposes the HSI into the weighted summation of the dictionary elements, Gaussian noise term a… Show more

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