Li Caoyuan, Xie Hong-Bo, Fan Xuhui, Xu Richard Yi Da, Van Huffel Sabine, Sisson Scott A, Mengersen Kerrie
IEEE Trans Image Process. 2019 Oct;28(10):4899-4911. doi: 10.1109/TIP.2019.2912292. Epub 2019 Apr 26.
Singular value thresholding (SVT)- or nuclear norm minimization (NNM)-based nonlocal image denoising methods often rely on the precise estimation of the noise variance. However, most existing methods either assume that the noise variance is known or require an extra step to estimate it. Under the iterative regularization framework, the error in the noise variance estimate propagates and accumulates with each iteration, ultimately degrading the overall denoising performance. In addition, the essence of these methods is still least squares estimation, which can cause a very high mean-squared error (MSE) and is inadequate for handling missing data or outliers. In order to address these deficiencies, we present a hybrid denoising model based on variational Bayesian inference and Stein's unbiased risk estimator (SURE), which consists of two complementary steps. In the first step, the variational Bayesian SVT performs a low-rank approximation of the nonlocal image patch matrix to simultaneously remove the noise and estimate the noise variance. In the second step, we modify the conventional SURE full-rank SVT and its divergence formulas for rank-reduced eigen-triplets to remove the residual artifacts. The proposed hybrid BSSVT method achieves better performance in recovering the true image compared with state-of-the-art methods.
基于奇异值阈值化(SVT)或核范数最小化(NNM)的非局部图像去噪方法通常依赖于噪声方差的精确估计。然而,大多数现有方法要么假设噪声方差已知,要么需要额外的步骤来估计它。在迭代正则化框架下,噪声方差估计中的误差会随着每次迭代而传播和累积,最终降低整体去噪性能。此外,这些方法的本质仍然是最小二乘估计,这可能会导致非常高的均方误差(MSE),并且不足以处理缺失数据或离群值。为了解决这些不足,我们提出了一种基于变分贝叶斯推理和斯坦无偏风险估计器(SURE)的混合去噪模型,该模型由两个互补步骤组成。第一步,变分贝叶斯SVT对非局部图像块矩阵进行低秩逼近,以同时去除噪声并估计噪声方差。第二步,我们修改了传统的SURE满秩SVT及其针对降秩特征三元组的散度公式,以去除残留伪影。与现有方法相比,所提出的混合BSSVT方法在恢复真实图像方面具有更好的性能。