首页> 外文期刊>Journal of mathematical imaging and vision >A Unified Optimization Perspective to Single/Multi-observation Blur-Kernel Estimation with Applications to Camera-Shake Deblurring and Nonparametric Blind Super-Resolution
【24h】

A Unified Optimization Perspective to Single/Multi-observation Blur-Kernel Estimation with Applications to Camera-Shake Deblurring and Nonparametric Blind Super-Resolution

机译:单/多观测模糊核估计的统一优化视角及其在相机抖动去模糊和非参数盲超分辨率中的应用

获取原文
获取原文并翻译 | 示例
           

摘要

The nonparametric blur-kernel estimation, using either single image or multi-observation, has been intensively studied since Fergus et al.'s influential work (ACM Trans Graph 25:787-794, 2006). However, in the current literature there is always a gap between the two highly relevant problems; that is, single- and multi-shot blind deconvolutions are modeled and solved independently, lacking a unified optimization perspective. In this paper, we attempt to bridge the gap between the two problems and propose a rigorous and unified minimization function for single/multi-shot blur-kernel estimation by coupling the maximum-a-posteriori (MAP) and variational Bayesian (VB) principles. The new function is depicted using a directed graphical model, where the sharp image and the inverse noise variance associated with each shot are treated as random variables, while each blur-kernel, in difference from existing VB methods, is just modeled as a deterministic parameter. Utilizing a universal, three-level hierarchical prior on the latent sharp image and a Gamma hyper-prior on each inverse noise variance, single/multi-shot blur-kernel estimation is uniformly formulated as an -norm-regularized negative log-marginal-likelihood minimization problem. By borrowing ideas of expectation-maximization, majorization-minimization, and mean field approximation, as well as iteratively reweighted least squares, all the unknowns of interest, including the sharp image, the blur-kernels, the inverse noise variances, as well as other relevant parameters are estimated automatically. Compared with most single/multi-shot blur-kernel estimation methods, the proposed approach is not only more flexible in processing multiple observations under distinct imaging scenarios due to its independence of the commutative property of convolution but also more adaptive in sparse image modeling while in the meanwhile with much less implementational heuristics. Finally, the proposed blur-kernel estimation method is naturally applied to two low-level vision problems, i.e., camera-shake deblurring and nonparametric blind super-resolution. Experiments on benchmark real-world motion blurred images, simulated multiple-blurred images, as well as both synthetic and realistic low-resolution blurred images are conducted, demonstrating the superiority of the proposed approach to state-of-the-art single/multi-shot camera-shake deblurring and nonparametric blind super-resolution methods.
机译:自Fergus等人的有影响的工作以来(ACM Trans Graph 25:787-794,2006),已经深入研究了使用单图像或多观察的非参数模糊核估计。但是,在当前文献中,两个高度相关的问题之间始终存在差距。也就是说,单次和多次射击盲反卷积是独立建模和求解的,缺乏统一的优化视角。在本文中,我们试图弥合这两个问题之间的差距,并通过结合最大后验(MAP)和变分贝叶斯(VB)原理为单次/多次射击模糊核估计提出一个严格且统一的最小化函数。使用定向图形模型描述了新功能,其中与每个镜头相关的清晰图像和逆噪声方差被视为随机变量,而与现有VB方法不同的每个模糊核仅被作为确定性参数进行建模。利用在潜在锐利图像上的通用三级分层优先级和在每个逆噪声方差上的Gamma超优先级,将单次/多次射击模糊核估计统一公式化为-规范正则化的负对数边际可能性最小化问题。通过借用期望最大化,主化最小化和均值场近似以及迭代加权的最小二乘法的思想,所有感兴趣的未知数,包括清晰图像,模糊核,逆噪声方差以及其他相关参数会自动估算。与大多数单/多镜头模糊核估计方法相比,该方法不仅具有卷积交换特性的独立性,而且在不同的成像场景下处理多个观测值时更加灵活,而且在稀疏图像建模时更具适应性。同时,实施启发式方法要少得多。最后,提出的模糊核估计方法自然地应用于两个低级视觉问题,即相机抖动去模糊和非参数盲超分辨率。进行了基准真实世界运动模糊图像,模拟的多模糊图像以及合成的和现实的低分辨率模糊图像的实验,证明了所提出的方法对于最新的单/多图像模糊处理的优越性。镜头抖动消除模糊和非参数盲超分辨率方法。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号