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Non-parametric Bayesian dictionary learning for image super resolution

机译:非参数贝叶斯词典学习的图像超分辨率

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This paper addresses the problem of generating a super-resolution (SR) image from a single low-resolution input image. A non-parametric Bayesian method is implemented to train the over-complete dictionary. The first advantage of using non-parametric Bayesian approach is the number of dictionary atoms and their relative importance may be inferred non-parametrically. In addition, sparsity level of the coefficients may be inferred automatically. Finally, the non-parametric Bayesian approach may learn the dictionary in situ. Two previous state-of-the-art methods including the efficient ℓ1 method and the (K-SVD) are implemented for comparison. Although the efficient ℓ1 method overall produces the best quality super-resolution images, the 837-atom dictionary trained by non-parametric Bayesian method produces super-resolution images that very close to quality of images produced by the 1024-atom efficient ℓ1 dictionary. Finally, the non-parametric Bayesian method has the fastest speed in training the over-complete dictionary.
机译:本文解决了从单个低分辨率输入图像生成超分辨率(SR)图像的问题。实现了非参数贝叶斯方法来训练超完备字典。使用非参数贝叶斯方法的第一个优点是字典原子的数量,并且它们的相对重要性可以通过非参数推论得出。另外,可以自动推断系数的稀疏度。最后,非参数贝叶斯方法可以就地学习字典。为了进行比较,实现了两个先前的最新技术,包括高效的ℓ 1 方法和(K-SVD)。尽管有效的ℓ 1 方法总体上可产生最佳质量的超分辨率图像,但通过非参数贝叶斯方法训练的837原子词典可产生非常接近于由Aβ产生的图像质量的超分辨率图像。 1024原子有效的ℓ 1 字典。最后,非参数贝叶斯方法在训练超完备字典中具有最快的速度。

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