基于Huber- tikhonov正则化的Huber Bayesian鲁棒迭代多帧超分辨率重建

V. Patanavijit, S. Jitapunkul
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引用次数: 25

摘要

传统的SRR(超分辨率重建)估计基于L1或L2统计范数估计,因此这些SRR方法通常对其假设的数据模型和噪声非常敏感,这限制了它们的实用性。本文综述了一些SRR方法,并指出了它们的不足。我们提出了一种基于贝叶斯MAP估计的随机正则化技术的SRR方法。Huber范数用于测量高分辨率图像和每个低分辨率图像的投影估计值之间的差异,去除数据中的异常值,使用Tikhonov和Huber-Tikhonov正则化从最终答案中去除伪影并提高收敛速度。实验结果证实了该方法的有效性,并在无噪声、AWGN、泊松和椒盐噪声等几种噪声模型上,证明了该方法优于其他基于L1和L2范数的超分辨方法
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A Robust Iterative Multiframe Super-Resolution Reconstruction using a Huber Bayesian Approach with Huber-Tikhonov Regularization
The traditional SRR (super-resolution reconstruction) estimations are based on L1 or L2 statistical norm estimation therefore these SRR methods are usually very sensitive to their assumed model of data and noise that limits their utility. This paper reviews some of these SRR methods and addresses their shortcomings. We propose a novel SRR approach based on the stochastic regularization technique of Bayesian MAP estimation by minimizing a cost function. The Huber norm is used for measuring the difference between the projected estimate of the high-resolution image and each low resolution image, removing outliers in the data and Tikhonov and Huber-Tikhonov regularization are used to remove artifacts from the final answer and improve the rate of convergence. The experimental results confirm the effectiveness of our methods and demonstrate its superiority to other super-resolution methods based on L1 and L2 norm for several noise models such as noiseless, AWGN, Poisson and salt & pepper noise
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