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Multiple Norms and Boundary Constraint Enforced Image Deblurring via Efficient MCMC Algorithm

机译:高效MCMC算法的多规范和边界约束强制映像去孔

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Image non-blind deblurring is still an ill-posed problem. Uncertainty in solutions occurs when singular vectors of forward model matrix spanning the noise subspace have rather small singular values. This letter proposes a new image deblurring algorithm, called MNBC-Gibbs (multiple norms and boundary constraint enforced Gibbs sampling). To be more specific, the quadratic and sparseness-inducing norms are combined to construct regularization term, and the objective function is gradually minimized without requirement of regularization parameter choice. In particular, we propose an efficient Markov chain Monte Carlo (MCMC) method equipped with closed-form solution, artifacts processing and non-negative constraint to approximate the posterior distribution and estimate uncertainty for the unknown. Satisfactory deblurring results with sharp edges can be generated while maintaining smoothness without raising extra noise. The quantitative evaluations on different blur kernels and comparison with state-of-the-art image deblurring methods demonstrate the superiority of the proposed method. In addition, we show that our method can effectively deal with real blurry images.
机译:图像非盲目去抑制仍然是一个不成不良的问题。当跨越噪声子空间的正向模型矩阵的奇异载体具有相当小的奇异值时,解决方案中的不确定性。这封信提出了一种新的图像去孔算法,称为MNBC-GIBB(多规范和边界约束强制采样)。更具体地,二次和稀疏性诱导规范组合以构建正则化术语,目标函数逐渐最小化,而无需正则化参数选择。特别是,我们提出了一种高效的马尔可夫链蒙特卡罗(MCMC)方法,配备有闭合溶液,伪像处理和非负约束,以近似未知的后部分布和估计不确定性。可以在保持平滑度的同时产生满意的尖锐边缘的展开效果,而不会提高额外的噪音。不同模糊核的定量评估和与最先进的图像去掩盖方法的比较证明了所提出的方法的优越性。此外,我们表明我们的方法可以有效地处理真正的模糊图像。

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