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Image restoration using space-variant Gaussian scale mixtures in overcomplete pyramids

机译:在超完备金字塔中使用空间变异高斯尺度混合图像进行图像恢复

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摘要

In recent years, Bayes least squares-Gaussian scale mixtures (BLS-GSM) has emerged as one of the most powerful methods for image restoration. Its strength relies on providing a simple and, yet, very effective local statistical description of oriented pyramid coefficient neighborhoods via a GSM vector. This can be viewed as a fine adaptation of the model to the signal variance at each scale, orientation, and spatial location. Here, we present an enhancement of the model by introducing a coarser adaptation level, where a larger neighborhood is used to estimate the local signal covariance within every subband. We formulate our model as a BLS estimator using space-variant GSM. The model can be also applied to image deconvolution, by first performing a global blur compensation, and then doing local adaptive denoising. We demonstrate through simulations that the proposed method, besides being model-based and noniterative, it is also robust and efficient. Its performance, measured visually and in L2-norm terms, is significantly higher than the original BLS-GSM method, both for denoising and deconvolution. © 2007 IEEE.
机译:近年来,贝叶斯最小二乘-高斯尺度混合(BLS-GSM)已经成为最强大的图像还原方法之一。它的强度依赖于通过GSM向量提供定向金字塔系数邻域的简单但非常有效的局部统计描述。这可以看作是模型在每个比例,方向和空间位置上对信号方差的精细调整。在这里,我们通过引入较粗的适应水平来提出模型的增强,其中使用较大的邻域来估计每个子带内的局部信号协方差。我们使用空间变量GSM将模型表示为BLS估计器。通过首先执行全局模糊补偿,然后执行局部自适应去噪,该模型也可以应用于图像反卷积。通过仿真,我们证明了所提出的方法,除了基于模型和非迭代的之外,还健壮高效。在去噪和去卷积方面,从视觉上和以L2范数衡量,其性能均明显高于原始的BLS-GSM方法。 ©2007 IEEE。

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