基于分类的神经网络图像插值

Hao Hu, P. M. Holman, G. de Haan
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引用次数: 14

摘要

标准的图像插值方法一般在整个图像上使用均匀的插值滤波器。为了在特定结构上获得更好的性能,引入了一些内容自适应插值方法,如Kondo的方法(1)。然而,这些内容自适应方法仅限于将图像数据拟合到每个类别的线性模型中。我们研究用一个灵活的非线性模型代替线性模型,如前馈神经网络。这就产生了一种新的基于已知分类的插值算法,但获得了更好的结果。本文提出了一种基于分类的神经网络方法,并对其进行了评价。客观和主观图像质量结果表明,该方法对插值后的图像质量有了进一步的提高。
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Image interpolation using classification-based neural networks
Standard image interpolation methods generally use a uniform interpolation filter on the entire image. To achieve a better performance on specific structures, some content adaptive interpolation methods, such as Kondo's method (1), have been introduced. However, these content adaptive methods are limited to fit image data into a linear model in each class. We investigate replacing the linear model by a flexible non-linear model, such as a feed-forward neural network. This results in a new interpolation algorithm based on known classification, but achieving better results. In this paper, such a classification-based neural network approach and its evaluation are presented. Both objective and subjective image quality results indicate that the proposed method gives an additional improvement in the interpolated image quality 1 .
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