正则化超分辨率图像重建的实现方案

Hua Yan, Ju Liu
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引用次数: 0

摘要

本文提出了两种有效的同步和并行递归方法来实现正则化超分辨率图像重建。在同步递归中,迭代步长根据各观测通道的梯度下降速度自适应调整。然而,当模糊支持过大或低分辨率图像严重退化时,所需的高分辨率(HR)图像的高频信息仍然是平滑的。因此,为了更有效地融合不同观测通道的信息,提出了并行递归重构期望的HR图像。在这两种递推方案中,分别去除了下采样过程中的空间积分和系统模糊,并在上采样过程中使用最近邻插值来抑制边缘伪影。仿真结果表明,所提出的两种实现方案在客观和主观测量方面都取得了令人满意的结果。
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Implementation Schemes of Regularization Super-Resolution Image Reconstruction
This paper proposes two effective synchronous and parallel recursion schemes to implement regularization super-resolution image reconstruction. In the synchronous recursion, iteration step is adaptively adjusted by the speed of gradient descent to each observation channel. When blur support is too large or low-resolution images are severely degraded, however, the high-frequency information of the desired high-resolution (HR) image is still smoothed. So for fusing the information from different observation channels more effectively, parallel recursion is proposed to reconstruct desired HR image. In the two recursion schemes, spatial integration in down-sampling process is removed as well as system blurs, and nearest interpolation in up-sampling process is used to restrain edge artifact. Simulation results demonstrate that the two proposed implementation schemes give more satisfying results in both objective and subjective measurements.
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