基于仿射变换的小波多尺度分量配准图像超分辨率

Y. Matsuo, Ryoki Takada, Shinya Iwasaki, J. Katto
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引用次数: 3

摘要

提出了一种基于仿射变换的小波多尺度分量配准的数字电影到8K超高清电视图像超分辨方法。该方法的特点是通过小波软收缩检测白噪声水平,将原始图像分为信号和噪声两部分。通过仿射变换和参数优化,将信号分量与其小波多尺度分量进行配准,提高信号分量的分辨率。仿射变换增加了配准候选者,从而提高了超分辨率图像的质量。噪声分量通过考虑影院噪声表现的功率控制来提高分辨率。通过合成超分辨信号和噪声分量输出超分辨图像。实验表明,与传统的超分辨方法相比,该方法在客观上具有更好的PSNR测量值,在主观上具有更好的外观。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image Super-resolution Using Registration of Wavelet Multi-scale Components with Affine Transformation
We propose a novel image super-resolution method from digital cinema to 8K ultra high-definition television using registration of wavelet multi-scale components with affine transformation. The proposed method features that an original image is divided into signal and noise components by the wavelet soft-shrinkage with detection of white noise level. The signal component enhances resolution by registration between a signal component and its wavelet multi-scale components with affine transformation and parameters optimization. The affine transformation enhances super-resolution image quality because it increases registration candidates. The noise component enhances resolution with power control considering cinema noise representation. Super-resolution image outputs by synthesis of super-resolved signal and noise components. Experiments show that the proposed method has objectively better PSNR measurement and subjectively better appearance in comparison with conventional super-resolution methods.
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