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首页> 外文期刊>Signal Processing. Image Communication: A Publication of the the European Association for Signal Processing >Multi-frame super-resolution reconstruction based on mixed Poisson Gaussian noise
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Multi-frame super-resolution reconstruction based on mixed Poisson Gaussian noise

机译:基于混合泊松高斯噪声的多帧超分辨率重构

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摘要

In this paper, a non-blind multi-frame super-resolution (SR) model based on mixed Poisson Gaussian noise (MPGSR) is proposed. Poisson noise arises from the stochastic nature of the photon-counting process. Readout noise and reset noise inherent to the readout circuitry can be modeled by an additive Gaussian noise. Therefore, a mixed Poisson-Gaussian noise model is more appropriate for real imaging system. Instead of deriving the data fidelity term from the perspective of error norms and the corresponding influence functions, we address the multi-frame SR problem based on a statistical noise model. The derived objective function is decomposed into sub-functions and solved by the alternating direction method of multipliers (ADMM) algorithm which allows using techniques of constrained optimization. The validation of the proposed MPGSR was performed quantitatively and qualitatively on natural and X-ray images. In comparison to the optimization-based and learning-based state-of-the-art methods, we have demonstrated the feasibility of MPGSR and the significance of applying a more appropriate noise model on the SR image reconstruction.
机译:本文提出了一种基于混合泊松高斯噪声(MPGSR)的非盲多帧超分辨率(SR)模型。泊松噪声来自光子计数过程的随机性质。读出噪声和读出电路固有的复位噪声可以通过添加性高斯噪声来建模。因此,混合泊松 - 高斯噪声模型更适合真实的成像系统。我们基于统计噪声模型来解决多帧SR问题而不是从误差规范和相应的影响功能导出数据保真术语。导出的目标函数被分解成亚函数并通过乘法器(ADMM)算法的交替方向方法解决,其允许使用受约束优化的技术。所提出的MPGSR的验证是在天然和X射线图像上定量和定性进行的。与基于优化和基于学习的最先进的方法相比,我们已经证明了MPGSR的可行性以及在SR图像重建上应用更合适的噪声模型的重要性。

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