Multiscale higher-order TV operators for L1 regularization

IF 3.56 Q1 Medicine
Toby Sanders, Rodrigo B. Platte
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引用次数: 11

Abstract

In the realm of signal and image denoising and reconstruction, \(\ell _1\) regularization techniques have generated a great deal of attention with a multitude of variants. In this work, we demonstrate that the \(\ell _1\) formulation can sometimes result in undesirable artifacts that are inconsistent with desired sparsity promoting \(\ell _0\) properties that the \(\ell _1\) formulation is intended to approximate. With this as our motivation, we develop a multiscale higher-order total variation (MHOTV) approach, which we show is related to the use of multiscale Daubechies wavelets. The relationship of higher-order regularization methods with wavelets, which we believe has generally gone unrecognized, is shown to hold in several numerical results, although notable improvements are seen with our approach over both wavelets and classical HOTV. These results are presented for 1D signals and 2D images, and we include several examples that highlight the potential of our approach for improving two- and three-dimensional electron microscopy imaging. In the development approach, we construct the tools necessary for MHOTV computations to be performed efficiently, via operator decomposition and alternatively converting the problem into Fourier space.

Abstract Image

用于L1正则化的多尺度高阶电视算子
在信号和图像去噪和重建领域,\(\ell _1\)正则化技术已经产生了大量的变体引起了广泛的关注。在这项工作中,我们证明了\(\ell _1\)公式有时会导致与期望的稀疏性不一致的不良工件,从而促进\(\ell _1\)公式旨在近似的\(\ell _0\)属性。以此为动机,我们开发了一种多尺度高阶总变差(MHOTV)方法,该方法与多尺度多贝西小波的使用有关。高阶正则化方法与小波的关系,我们认为通常没有被认识到,在几个数值结果中被证明是成立的,尽管我们的方法在小波和经典HOTV上都有显着的改进。这些结果是针对一维信号和二维图像提出的,我们包括几个例子,突出了我们的方法在改进二维和三维电子显微镜成像方面的潜力。在开发方法中,我们构建了有效执行MHOTV计算所需的工具,通过算子分解和将问题转换为傅里叶空间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Advanced Structural and Chemical Imaging
Advanced Structural and Chemical Imaging Medicine-Radiology, Nuclear Medicine and Imaging
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