References

BDDH11

Richard Baraniuk, M Davenport, M Duarte, and Chinmay Hegde. An introduction to compressive sensing. Connexions e-textbook, 2011.

BD09

Thomas Blumensath and Mike E Davies. Iterative hard thresholding for compressed sensing. Applied and Computational Harmonic Analysis, 27(3):265–274, 2009.

BPC+11

Stephen Boyd, Neal Parikh, Eric Chu, Borja Peleato, and Jonathan Eckstein. Distributed optimization and statistical learning via the alternating direction method of multipliers. Foundations and Trends in Machine Learning, 3(1):1–122, 2011.

BV04

Stephen Boyd and Lieven Vandenberghe. Convex optimization. Cambridge university press, 2004.

Candes06

Emmanuel J Candès. Compressive sampling. In Proceedings of the International Congress of Mathematicians: Madrid, August 22-30, 2006: invited lectures, 1433–1452. 2006.

CandesW08

Emmanuel J Candès and Michael B Wakin. An introduction to compressive sampling. Signal Processing Magazine, IEEE, 25(2):21–30, 2008.

CDS98

Scott Shaobing Chen, David L Donoho, and Michael A Saunders. Atomic decomposition by basis pursuit. SIAM journal on scientific computing, 20(1):33–61, 1998.

CCSW14

Yangkang Chen, Keling Chen, Peidong Shi, and Yanyan Wang. Irregular seismic data reconstruction using a percentile-half-thresholding algorithm. Journal of Geophysics and Engineering, 11(6):065001, 2014.

DM09

Wei Dai and Olgica Milenkovic. Subspace pursuit for compressive sensing signal reconstruction. Information Theory, IEEE Transactions on, 55(5):2230–2249, 2009.

DDDM04

Ingrid Daubechies, Michel Defrise, and Christine De Mol. An iterative thresholding algorithm for linear inverse problems with a sparsity constraint. Communications on pure and applied mathematics, 57(11):1413–1457, 2004.

Don06

David L Donoho. Compressed sensing. Information Theory, IEEE Transactions on, 52(4):1289–1306, 2006.

Ela10

Michael Elad. Sparse and redundant representations. Springer, 2010.

Fou11

Simon Foucart. Recovering jointly sparse vectors via hard thresholding pursuit. Proc. Sampling Theory and Applications (SampTA)],(May 2-6 2011), 2011.

Mal08

Stephane Mallat. A wavelet tour of signal processing: the sparse way. Access Online via Elsevier, 2008.

NT09

Deanna Needell and Joel A Tropp. Cosamp: iterative signal recovery from incomplete and inaccurate samples. Applied and Computational Harmonic Analysis, 26(3):301–321, 2009.

PRK93

Yagyensh Chandra Pati, Ramin Rezaiifar, and PS Krishnaprasad. Orthogonal matching pursuit: recursive function approximation with applications to wavelet decomposition. In Signals, Systems and Computers, 1993. 1993 Conference Record of The Twenty-Seventh Asilomar Conference on, 40–44. IEEE, 1993.

RV19

Matteo Ravasi and Ivan Vasconcelos. Pylops–a linear-operator python library for large scale optimization. arXiv preprint arXiv:1907.12349, 2019.

TC98

Christopher Torrence and Gilbert P Compo. A practical guide to wavelet analysis. Bulletin of the American Meteorological society, 79(1):61–78, 1998.

Tro04

Joel A Tropp. Greed is good: algorithmic results for sparse approximation. Information Theory, IEEE Transactions on, 50(10):2231–2242, 2004.

YZ11

Junfeng Yang and Yin Zhang. Alternating direction algorithms for l_1-problems in compressive sensing. SIAM journal on scientific computing, 33(1):250–278, 2011.

ZYY10

Yin Zhang, Junfeng Yang, and Wotao Yin. User's guide for yall1: your algorithms for l1 optimization: version 1.0. Technical Report, CAAM Department, Rice University, 2010.

ZE10

Michael Zibulevsky and Michael Elad. L1-l2 optimization in signal and image processing. IEEE Signal Processing Magazine, 27(3):76–88, 2010.