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Image restoration and reconstruction using variable splitting and class-adapted image priors

机译:使用可变分裂和类适应图像前导的图像恢复与重建

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This paper proposes using a Gaussian mixture model as a patch-based prior, for solving two image inverse problems, namely image deblurring and compressive imaging. We capitalize on the fact that variable splitting algorithms, like ADMM, are able to decouple the handling of the observation operator from that of the regularizer, and plug a state-of-the-art algorithm into the denoising step. Furthermore, we show that, when applied to a specific type of image, a Gaussian mixture model trained from an database of images of the same type is able to outperform current state-of-the-art generic methods.
机译:本文提出使用高斯混合模型作为基于补丁的先前,用于求解两个图像逆问题,即图像去孔和压缩成像。 我们利用了可变分割算法,如admm,能够将观察操作员的处理与常规器的处理分离,并将最先进的算法插入去噪步骤。 此外,我们表明,当应用于特定类型的图像时,从相同类型的图像数据库训练的高斯混合模型能够优于最新的最先进的通用方法。

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