We consider the problem of signal reconstruction from quadratic measurements that are encoded as +1 or -1 depending on whether they exceed a predetermined positive threshold or not. Binary measurements are fast to acquire and inexpensive in terms of hardware. We formulate the problem of signal reconstruction using a consistency criterion, wherein one seeks to find a signal that is in agreement with the acquired measurements. To enforce consistency, we construct a convex cost using a one-sided quadratic penalty and minimize it using an iterative accelerated projected gradient-descent technique. The projected gradient-descent (PGD) scheme reduces the cost function in each iteration, whereas incorporating momentum into PGD, notwithstanding the...
Recovering a signal from its Fourier magnitude is referred to as phase retrieval, which occurs in di...
International audienceWe consider a {\em blind} calibration problem in a compressed sensing measurem...
We explore a fundamental problem of super-resolving a signal of interest from a few measurements of ...
This paper analyzes the mean-square error performance of the popular PhaseLift algorithm for phase r...
In phase retrieval, the goal is to recover a complex signal from the magnitude of its linear measure...
In many applications, measurements of a signal consist of the magnitudes of linear functionals while...
We consider the problem of reconstructing two signals from the autocorrelation and cross-correlation...
Phase retrieval in real or complex Hilbert spaces is the task of recovering a vector, up to an overa...
Suppose we wish to recover a signal x ∈ Cn from m intensity measurements of the form |〈x, zi〉|2, i =...
We study the problem of recovering a t-sparse real vector from m quadratic equations yi=(ai*x)^2 wit...
This paper presents the Simulated Annealing Sparse PhAse Recovery (SASPAR) algorithm for reconstruct...
a new greedy algorithm to perform sparse signal reconstruction from signs of signal measurements, i....
42 pages, 37 figures, 3 appendixesInternational audienceCompressed sensing is a signal processing me...
Compressed sensing can substantially reduce the number of samples required for conventional signal a...
In many applications, signals are measured according to a linear process, but the phases of these me...
Recovering a signal from its Fourier magnitude is referred to as phase retrieval, which occurs in di...
International audienceWe consider a {\em blind} calibration problem in a compressed sensing measurem...
We explore a fundamental problem of super-resolving a signal of interest from a few measurements of ...
This paper analyzes the mean-square error performance of the popular PhaseLift algorithm for phase r...
In phase retrieval, the goal is to recover a complex signal from the magnitude of its linear measure...
In many applications, measurements of a signal consist of the magnitudes of linear functionals while...
We consider the problem of reconstructing two signals from the autocorrelation and cross-correlation...
Phase retrieval in real or complex Hilbert spaces is the task of recovering a vector, up to an overa...
Suppose we wish to recover a signal x ∈ Cn from m intensity measurements of the form |〈x, zi〉|2, i =...
We study the problem of recovering a t-sparse real vector from m quadratic equations yi=(ai*x)^2 wit...
This paper presents the Simulated Annealing Sparse PhAse Recovery (SASPAR) algorithm for reconstruct...
a new greedy algorithm to perform sparse signal reconstruction from signs of signal measurements, i....
42 pages, 37 figures, 3 appendixesInternational audienceCompressed sensing is a signal processing me...
Compressed sensing can substantially reduce the number of samples required for conventional signal a...
In many applications, signals are measured according to a linear process, but the phases of these me...
Recovering a signal from its Fourier magnitude is referred to as phase retrieval, which occurs in di...
International audienceWe consider a {\em blind} calibration problem in a compressed sensing measurem...
We explore a fundamental problem of super-resolving a signal of interest from a few measurements of ...