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首页> 外文期刊>Mathematical Problems in Engineering: Theory, Methods and Applications >A Variational Bayesian Superresolution Approach Using Adaptive Image Prior Model
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A Variational Bayesian Superresolution Approach Using Adaptive Image Prior Model

机译:基于自适应图像先验模型的变分贝叶斯超分辨率方法

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摘要

The objective of superresolution is to reconstruct a high-resolution image by using the information of a set of low-resolution images. Recently, the variational Bayesian superresolution approach has been widely used. However, these methods cannot preserve edges well while removing noises. For this reason, we propose a new image prior model and establish a Bayesian superresolution reconstruction algorithm. In the proposed prior model, the degree of interaction between pixels is adjusted adaptively by an adaptive norm, which is derived based on the local image features. Moreover, in this paper, a monotonically decreasing function is used to calculate and update the single parameter, which is used to control the severity of penalizing image gradients in the proposed prior model. Thus, the proposed prior model is adaptive to the local image features thoroughly. With the proposed prior model, the edge details are preserved and noises are reduced simultaneously. A variational Bayesian inference is employed in this paper, and the formulas for calculating all the variables including the HR image, motion parameters, and hyperparameters are derived. These variables are refined progressively in an iterative manner. Experimental results show that the proposed SR approach is very efficient when compared to existing approaches.
机译:超分辨率的目的是通过使用一组低分辨率图像的信息来重建高分辨率图像。最近,变分贝叶斯超分辨率方法已被广泛使用。但是,这些方法在去除噪声时不能很好地保留边缘。因此,我们提出了一种新的图像先验模型,并建立了贝叶斯超分辨率重建算法。在提出的现有模型中,像素之间的交互程度通过基于本地图像特征的自适应范数进行自适应调整。此外,在本文中,使用单调递减函数来计算和更新单个参数,该参数用于控制所提出的现有模型中惩罚图像梯度的严重性。因此,提出的现有模型完全适应了局部图像特征。利用所提出的现有模型,可以保留边缘细节并同时降低噪声。本文采用变分贝叶斯推理,推导了计算HR图像,运动参数和超参数等所有变量的公式。这些变量以迭代方式逐步完善。实验结果表明,与现有方法相比,所提出的SR方法非常有效。

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