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外积字典学习高效求和法(SOUP-DIL)及其在逆问题中的应用

Efficient Sum of Outer Products Dictionary Learning (SOUP-DIL) and Its Application to Inverse Problems.

作者信息

Ravishankar Saiprasad, Nadakuditi Raj Rao, Fessler Jeffrey A

机构信息

Department of Electrical Engineering and Computer Science, University of Michigan, Ann Arbor, MI, 48109 USA.

出版信息

IEEE Trans Comput Imaging. 2017 Dec;3(4):694-709. doi: 10.1109/TCI.2017.2697206. Epub 2017 Apr 21.

DOI:10.1109/TCI.2017.2697206
PMID:29376111
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC5786175/
Abstract

The sparsity of signals in a transform domain or dictionary has been exploited in applications such as compression, denoising and inverse problems. More recently, data-driven adaptation of synthesis dictionaries has shown promise compared to analytical dictionary models. However, dictionary learning problems are typically non-convex and NP-hard, and the usual alternating minimization approaches for these problems are often computationally expensive, with the computations dominated by the NP-hard synthesis sparse coding step. This paper exploits the ideas that drive algorithms such as K-SVD, and investigates in detail efficient methods for aggregate sparsity penalized dictionary learning by first approximating the data with a sum of sparse rank-one matrices (outer products) and then using a block coordinate descent approach to estimate the unknowns. The resulting block coordinate descent algorithms involve efficient closed-form solutions. Furthermore, we consider the problem of dictionary-blind image reconstruction, and propose novel and efficient algorithms for adaptive image reconstruction using block coordinate descent and sum of outer products methodologies. We provide a convergence study of the algorithms for dictionary learning and dictionary-blind image reconstruction. Our numerical experiments show the promising performance and speedups provided by the proposed methods over previous schemes in sparse data representation and compressed sensing-based image reconstruction.

摘要

变换域或字典中信号的稀疏性已在诸如压缩、去噪和逆问题等应用中得到利用。最近,与解析字典模型相比,数据驱动的合成字典自适应已显示出前景。然而,字典学习问题通常是非凸且NP难的,并且针对这些问题的常用交替最小化方法通常计算成本很高,计算主要由NP难的合成稀疏编码步骤主导。本文利用了驱动诸如K-SVD等算法的思想,并通过首先用稀疏秩一矩阵(外积)之和逼近数据,然后使用块坐标下降法估计未知数,详细研究了用于聚合稀疏性惩罚字典学习的有效方法。由此产生的块坐标下降算法涉及高效的闭式解。此外,我们考虑字典盲图像重建问题,并提出了使用块坐标下降和外积之和方法进行自适应图像重建的新颖且高效的算法。我们对字典学习和字典盲图像重建算法进行了收敛性研究。我们的数值实验表明,与以前的方案相比,所提出的方法在稀疏数据表示和基于压缩感知的图像重建中具有良好的性能和加速效果。

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2
Projected Iterative Soft-Thresholding Algorithm for Tight Frames in Compressed Sensing Magnetic Resonance Imaging.压缩感知磁共振成像中紧致框架的投影迭代软阈值算法。
IEEE Trans Med Imaging. 2016 Sep;35(9):2130-2140. doi: 10.1109/TMI.2016.2550080. Epub 2016 Apr 6.
3
Fast Multiclass Dictionaries Learning With Geometrical Directions in MRI Reconstruction.
NMR Biomed. 2020 Dec;33(12):e4344. doi: 10.1002/nbm.4344. Epub 2020 Jul 2.
4
Online Adaptive Image Reconstruction (OnAIR) Using Dictionary Models.使用字典模型的在线自适应图像重建(OnAIR)
IEEE Trans Comput Imaging. 2020;6:153-166. doi: 10.1109/tci.2019.2931092.
5
Image Reconstruction: From Sparsity to Data-adaptive Methods and Machine Learning.图像重建:从稀疏性到数据自适应方法与机器学习
Proc IEEE Inst Electr Electron Eng. 2020 Jan;108(1):86-109. doi: 10.1109/JPROC.2019.2936204. Epub 2019 Sep 19.
6
Low-Rank and Adaptive Sparse Signal (LASSI) Models for Highly Accelerated Dynamic Imaging.用于高加速动态成像的低秩和自适应稀疏信号(LASSI)模型
IEEE Trans Med Imaging. 2017 May;36(5):1116-1128. doi: 10.1109/TMI.2017.2650960. Epub 2017 Jan 10.
磁共振成像重建中基于几何方向的快速多类字典学习
IEEE Trans Biomed Eng. 2016 Sep;63(9):1850-1861. doi: 10.1109/TBME.2015.2503756. Epub 2015 Nov 25.
4
Dictionary Learning for Sparse Coding: Algorithms and Convergence Analysis.字典学习的稀疏编码:算法与收敛性分析。
IEEE Trans Pattern Anal Mach Intell. 2016 Jul;38(7):1356-69. doi: 10.1109/TPAMI.2015.2487966. Epub 2015 Oct 7.
5
A Fast Algorithm for Learning Overcomplete Dictionary for Sparse Representation Based on Proximal Operators.一种基于近端算子的用于稀疏表示的过完备字典学习快速算法。
Neural Comput. 2015 Sep;27(9):1951-82. doi: 10.1162/NECO_a_00763. Epub 2015 Jul 10.
6
Balanced sparse model for tight frames in compressed sensing magnetic resonance imaging.压缩感知磁共振成像中紧框架的平衡稀疏模型
PLoS One. 2015 Apr 7;10(4):e0119584. doi: 10.1371/journal.pone.0119584. eCollection 2015.
7
Learning Low-Dimensional Signal Models: A Bayesian approach based on incomplete measurements.学习低维信号模型:基于不完整测量的贝叶斯方法。
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8
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Med Image Anal. 2014 Aug;18(6):843-56. doi: 10.1016/j.media.2013.09.007. Epub 2013 Oct 16.
9
Learning doubly sparse transforms for images.学习图像的双重稀疏变换。
IEEE Trans Image Process. 2013 Dec;22(12):4598-612. doi: 10.1109/TIP.2013.2274384. Epub 2013 Jul 23.
10
MR image reconstruction from highly undersampled k-space data by dictionary learning.基于字典学习的欠采样 k 空间数据磁共振图像重建。
IEEE Trans Med Imaging. 2011 May;30(5):1028-41. doi: 10.1109/TMI.2010.2090538. Epub 2010 Nov 1.