Raphan Martin, Simoncelli Eero P
Howard Hughes Medical Institute, Center for Neural Science, New York, NY 10003, USA.
IEEE Trans Image Process. 2008 Aug;17(8):1342-52. doi: 10.1109/TIP.2008.925392.
Image denoising methods are often designed to minimize mean-squared error (MSE) within the subbands of a multiscale decomposition. However, most high-quality denoising results have been obtained with overcomplete representations, for which minimization of MSE in the subband domain does not guarantee optimal MSE performance in the image domain. We prove that, despite this suboptimality, the expected image-domain MSE resulting from applying estimators to subbands that are made redundant through spatial replication of basis functions (e.g., cycle spinning) is always less than or equal to that resulting from applying the same estimators to the original nonredundant representation. In addition, we show that it is possible to further exploit overcompleteness by jointly optimizing the subband estimators for image-domain MSE. We develop an extended version of Stein's unbiased risk estimate (SURE) that allows us to perform this optimization adaptively, for each observed noisy image. We demonstrate this methodology using a new class of estimator formed from linear combinations of localized "bump" functions that are applied either pointwise or on local neighborhoods of subband coefficients. We show through simulations that the performance of these estimators applied to overcomplete subbands and optimized for image-domain MSE is substantially better than that obtained when they are optimized within each subband. This performance is, in turn, substantially better than that obtained when they are optimized for use on a nonredundant representation.
图像去噪方法通常旨在使多尺度分解子带内的均方误差(MSE)最小化。然而,大多数高质量的去噪结果是通过过完备表示获得的,对于过完备表示,在子带域中最小化MSE并不能保证在图像域中具有最优的MSE性能。我们证明,尽管存在这种次优性,但通过对通过基函数的空间复制(例如,循环旋转)而变得冗余的子带应用估计器所得到的预期图像域MSE始终小于或等于对原始非冗余表示应用相同估计器所得到的MSE。此外,我们表明可以通过联合优化子带估计器以获得图像域MSE来进一步利用过完备性。我们开发了斯坦因无偏风险估计(SURE)的扩展版本,它使我们能够针对每个观察到的噪声图像自适应地执行此优化。我们使用由局部“凸起”函数的线性组合形成的一类新估计器来演示这种方法,这些函数逐点应用于子带系数的局部邻域。我们通过仿真表明,应用于过完备子带并针对图像域MSE进行优化的这些估计器的性能明显优于在每个子带内进行优化时所获得的性能。反过来,这种性能又明显优于针对非冗余表示进行优化时所获得的性能。