AbstractRecent theoretical developments in the area of compressive sensing (CS) have the potential to significantly extend the capabilities of digital data acquisition systems such as analog-to-digital converters and digital imagers in certain applications. To date, most of the CS literature has been devoted to studying the recovery of sparse signals from a small number of linear measurements. In this paper, we study more practical CS systems where the measurements are quantized to a finite number of bits; in such systems some of the measurements typically saturate, causing significant nonlinearity and potentially unbounded errors. We develop two general approaches to sparse signal recovery in the face of saturation error. The first approac...
The recently emerged compressive sensing (CS) framework aims to acquire signals at reduced sample ra...
The theory of Compressed Sensing (CS) is based on reconstructing sparse signals from random linear m...
In this paper we present an introduction to Compressive Sampling (CS), an emerging model-based fram...
AbstractRecent theoretical developments in the area of compressive sensing (CS) have the potential t...
We explore and exploit a heretofore relatively unexplored hallmark of compressive sensing (CS), the ...
This article surveys the theory of compressive sampling, also known as compressed sensing or CS, a n...
The ten articles in this special section provide the reader with specific insights into the basic th...
The compressive sensing (CS) framework aims to ease the burden on analog-to-digital converters (ADCs...
Summary to appear in the Proceedings of the Data Compression Conference (DCC) '07, March 27-29, 2007...
The conventional Nyquist-Shannon sampling theorem has been fundamental to the acquisition of signals...
The theory of Compressed Sensing (CS) is based on reconstructing sparse signals from random linear m...
The recently-proposed theory of distilled sensing establishes that adaptivity in sampling can dramat...
The recently-proposed theory of distilled sensing establishes that adaptivity in sampling can dramat...
The recently-proposed theory of distilled sensing establishes that adaptivity in sampling can dramat...
The recently-proposed theory of distilled sensing establishes that adaptivity in sampling can dramat...
The recently emerged compressive sensing (CS) framework aims to acquire signals at reduced sample ra...
The theory of Compressed Sensing (CS) is based on reconstructing sparse signals from random linear m...
In this paper we present an introduction to Compressive Sampling (CS), an emerging model-based fram...
AbstractRecent theoretical developments in the area of compressive sensing (CS) have the potential t...
We explore and exploit a heretofore relatively unexplored hallmark of compressive sensing (CS), the ...
This article surveys the theory of compressive sampling, also known as compressed sensing or CS, a n...
The ten articles in this special section provide the reader with specific insights into the basic th...
The compressive sensing (CS) framework aims to ease the burden on analog-to-digital converters (ADCs...
Summary to appear in the Proceedings of the Data Compression Conference (DCC) '07, March 27-29, 2007...
The conventional Nyquist-Shannon sampling theorem has been fundamental to the acquisition of signals...
The theory of Compressed Sensing (CS) is based on reconstructing sparse signals from random linear m...
The recently-proposed theory of distilled sensing establishes that adaptivity in sampling can dramat...
The recently-proposed theory of distilled sensing establishes that adaptivity in sampling can dramat...
The recently-proposed theory of distilled sensing establishes that adaptivity in sampling can dramat...
The recently-proposed theory of distilled sensing establishes that adaptivity in sampling can dramat...
The recently emerged compressive sensing (CS) framework aims to acquire signals at reduced sample ra...
The theory of Compressed Sensing (CS) is based on reconstructing sparse signals from random linear m...
In this paper we present an introduction to Compressive Sampling (CS), an emerging model-based fram...