Turnitin
降AI改写
早检测系统
早降重系统
Turnitin-UK版
万方检测-期刊版
维普编辑部版
Grammarly检测
Paperpass检测
checkpass检测
PaperYY检测
A review of sparse recovery algorithms
EC Marques, N Maciel, L Naviner, H Cai, J Yang - IEEE access, 2018 - ieeexplore.ieee.org
Nowadays, a large amount of information has to be transmitted or processed. This implies
high-power processing, large memory density, and increased energy consumption. In …
high-power processing, large memory density, and increased energy consumption. In …
ADMM-CSNet: A deep learning approach for image compressive sensing
Compressive sensing (CS) is an effective technique for reconstructing image from a small
amount of sampled data. It has been widely applied in medical imaging, remote sensing …
amount of sampled data. It has been widely applied in medical imaging, remote sensing …
Channel estimation for movable antenna communication systems: A framework based on compressed sensing
Movable antenna (MA) is a new technology with great potential to improve communication
performance by enabling local movement of antennas for pursuing better channel …
performance by enabling local movement of antennas for pursuing better channel …
[KNYGA][B] An invitation to compressive sensing
This first chapter formulates the objectives of compressive sensing. It introduces the
standard compressive problem studied throughout the book and reveals its ubiquity in many …
standard compressive problem studied throughout the book and reveals its ubiquity in many …
[PDF][PDF] Introduction to compressed sensing.
In recent years, compressed sensing (CS) has attracted considerable attention in areas of
applied mathematics, computer science, and electrical engineering by suggesting that it may …
applied mathematics, computer science, and electrical engineering by suggesting that it may …
Signal processing with compressive measurements
The recently introduced theory of compressive sensing enables the recovery of sparse or
compressible signals from a small set of nonadaptive, linear measurements. If properly …
compressible signals from a small set of nonadaptive, linear measurements. If properly …
Compressed sensing for networked data
This article describes a very different approach to the decentralized compression of
networked data. Considering a particularly salient aspect of this struggle that revolves …
networked data. Considering a particularly salient aspect of this struggle that revolves …
Highly Undersampled Magnetic Resonance Image Reconstruction via Homotopic -Minimization
In clinical magnetic resonance imaging (MRI), any reduction in scan time offers a number of
potential benefits ranging from high-temporal-rate observation of physiological processes to …
potential benefits ranging from high-temporal-rate observation of physiological processes to …
Toeplitz compressed sensing matrices with applications to sparse channel estimation
Compressed sensing (CS) has recently emerged as a powerful signal acquisition paradigm.
In essence, CS enables the recovery of high-dimensional sparse signals from relatively few …
In essence, CS enables the recovery of high-dimensional sparse signals from relatively few …
Fast and efficient compressive sensing using structurally random matrices
This paper introduces a new framework to construct fast and efficient sensing matrices for
practical compressive sensing, called Structurally Random Matrix (SRM). In the proposed …
practical compressive sensing, called Structurally Random Matrix (SRM). In the proposed …