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A Soft Map Framework For Blind Super-resolution Image Reconstruction

机译:用于盲超分辨率图像重建的软地图框架

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This paper proposes a new algorithm to address blind image super-resolution (SR) by fusing multiple low-resolution (LR) blurred images to render a high-resolution (HR) image. Conventional SR image reconstruction algorithms assume the blurring occurred during the image formation process to be either negligible or can be characterized fully a priori. This assumption, however, is impractical as it is often difficult to eliminate the blurring completely in some applications or to know the blurring function completely a priori.In view of this, we present a new soft maximum a posteriori (MAP) estimation framework to perform joint blur identification and HR image reconstruction. The proposed method incorporates a soft blur prior that estimates the relevance of the best-fit parametric blur model, and induces reinforcement learning towards it. An iterative scheme based on alternating minimization is developed to estimate the blur and the HR image progressively. Experimental results show that the new method is effective in performing blind SR image reconstruction where there is limited information about the blurring function.
机译:本文提出了一种新的算法,通过融合多个低分辨率(LR)模糊图像以渲染高分辨率(HR)图像来解决盲图像超分辨率(SR)。传统的SR图像重建算法假定在图像形成过程中发生的模糊可以忽略不计,或者可以完全先验地表征。然而,这种假设是不切实际的,因为在某些应用中通常难以完全消除模糊或很难完全了解先验模糊函数。鉴于此,我们提出了一种新的软最大后验(MAP)估计框架联合模糊识别和HR图像重建。所提出的方法在评估最佳拟合参数模糊模型的相关性之前并入了一个软模糊,并对其进行了强化学习。开发了一种基于交替最小化的迭代方案来逐步估计模糊和HR图像。实验结果表明,在模糊函数信息有限的情况下,该新方法可以有效地进行盲SR图像重建。

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