Sparse Signal Reconstruction Using Blind Super-Resolution With Arbitrary Sampling (original) (raw)

Combining geometry and combinatorics: A unified approach to sparse signal recovery

Martin Strauss

2008 46th Annual Allerton Conference on Communication, Control, and Computing, 2008

View PDFchevron_right

Huffel, “Multi-structural signal recovery for biomedical compressive sensing

Ivan Gligorijevic

2013

View PDFchevron_right

Compressive Sensing Based Image Reconstruction

ketki Pathak

Lecture Notes in Computer Science, 2018

View PDFchevron_right

Multi-Resolution Kronecker Compressive Sensing

Byeungwoo Jeon

IEIE Transactions on Smart Processing and Computing, 2014

View PDFchevron_right

Robust compressive sensing of sparse signals: a review

Rafael Carrillo

EURASIP Journal on Advances in Signal Processing, 2016

View PDFchevron_right

Compressed sensing recovery via nonconvex shrinkage penalties

Rick Chartrand

Inverse Problems, 2016

View PDFchevron_right

A Survey of Compressive Sensing Based Greedy Pursuit Reconstruction Algorithms

Meenakshi Dhasmana

International Journal of Image, Graphics and Signal Processing, 2015

View PDFchevron_right

Super-resolving optical systems based on compressive sensing

Yitzhak Y August

2014 13th Workshop on Information Optics (WIO), 2014

View PDFchevron_right

Phase-only signal reconstruction

Monson Hayes

ICASSP '80. IEEE International Conference on Acoustics, Speech, and Signal Processing

View PDFchevron_right

Signal reconstruction by random sampling in chirp space

Eric Carlen

Nonlinear Dynamics, 2008

View PDFchevron_right

Noise Effects on a Proposed Algorithm for Signal Reconstruction and Bandwidth Optimization

Hesham F A Hamed

International journal of electrical and computer engineering systems, 2023

View PDFchevron_right

Task-based data-acquisition optimization for sparse image reconstruction systems

Mark Anastasio

Medical Imaging 2017: Image Perception, Observer Performance, and Technology Assessment

View PDFchevron_right

Potentials and Limits of Super-resolution Algorithms and Signal Reconstruction from Sparse Data

Gil Shabat

2008

View PDFchevron_right

Reconstruction of missing data using compressed sensing techniques with adaptive dictionary

satheesh perepu

Journal of Process Control, 2016

View PDFchevron_right

Image Super-Resolution Based on Alternative Registration, Blur Identification and Reconstruction

osama omer

Springer eBooks, 2012

View PDFchevron_right

An Enhanced Subsampling Technique in Compressive Sensing using Linear Interpolation and Random Measurement Matrix

Siddique Abubakr Muntaka

Research Square (Research Square), 2024

View PDFchevron_right

Formulation and algorithms for blind signal recovery

Gail Erten

Proceedings of 40th Midwest Symposium on Circuits and Systems. Dedicated to the Memory of Professor Mac Van Valkenburg

View PDFchevron_right

Noniterative Interpolation-Based Super-Resolution Minimizing Aliasing in the Reconstructed Image

Gonzalo Pajare

IEEE Transactions on Image Processing, 2008

View PDFchevron_right

FPGA Implementation of Orthogonal Matching Pursuit for Compressive Sensing Reconstruction

Pramod Kumar Meher

IEEE Transactions on Very Large Scale Integration (VLSI) Systems, 2015

View PDFchevron_right

A Complexity-Reduced ML Parametric Signal Reconstruction Method

Ahmet Enis Cetin

EURASIP Journal on Advances in Signal Processing, 2011

View PDFchevron_right

Introductory Chapter: Signal and Image Denoising

Mourad Talbi

Denoising - New Insights

View PDFchevron_right

Super-resolution by compressive sensing algorithms

A. Fannjiang

2012 Conference Record of the Forty Sixth Asilomar Conference on Signals, Systems and Computers (ASILOMAR), 2012

View PDFchevron_right

Adaptive Recovery of Signals by Convex Optimization

Arkadi Nemirovski

HAL (Le Centre pour la Communication Scientifique Directe), 2015

View PDFchevron_right

Blind single-image super resolution based on compressive sensing

Naser Karimi

Journal of Visual Communication and Image Representation, 2015

View PDFchevron_right

Grayscale image reconstruction from projections with linear noise response

Nikos Papamarkos

IEEE Workshop on Signal Processing Systems Design and Implementation, 2005.

View PDFchevron_right