通用小波基的快速阈值Landweber算法:在三维反褶积显微镜中的应用

C. Vonesch, Michael Unser
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引用次数: 2

摘要

小波域lscr1正则化是一种很有前途的反褶积方法。相应的变分问题可以用“阈值Landweber”(TL)算法求解。虽然这个迭代过程很容易实现,但众所周知它收敛速度很慢。在本文中,我们给出了一个改进算法的原理,该算法大大加快了速度。该方法适用于任意小波表示,从而推广了我们以往局限于非正态香农小波基的工作。数值实验表明,与现有的TL算法相比,我们可以在提供相同恢复质量的情况下获得高达10倍的加速。最后给出了一个实际数据的例子,证明了小波域正则化用于三维反褶积显微镜的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A fast thresholded Landweber algorithm for general wavelet bases: Application to 3D deconvolution microscopy
Wavelet-domain lscr1-regularization is a promising approach to deconvolution. The corresponding variational problem can be solved using a "thresholded Landweber" (TL) algorithm. While this iterative procedure is simple to implement, it is known to converge slowly. In this paper, we give the principle of a modified algorithm that is substantially faster. The method is applicable to arbitrary wavelet representations, thus generalizing our previous work which was restricted to the or- thonormal Shannon wavelet basis. Numerical experiments show that we can obtain up to a 10-fold speed-up with respect to the existing TL algorithm, while providing the same restoration quality. We also present an example with real data that demonstrates the feasibility of wavelet-domain regularization for 3D deconvolution microscopy.
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