We address the problem of reconstructing a sparse signal from its DFT magnitude. We refer to this problem as the sparse phase retrieval (SPR) problem, which finds applications in tomography, digital holography, electron microscopy, etc. We develop a Fienup-type iterative algorithm, referred to as the Max-K algorithm, to enforce sparsity and successively refine the estimate of phase. We show that the Max-K algorithm possesses Cauchy convergence properties under certain conditions, that is, the MSE of reconstruction does not increase with iterations. We also formulate the problem of SPR as a feasibility problem, where the goal is to find a signal that is sparse in a known basis and whose Fourier transform magnitude is consistent with the meas...
International audienceThe phase retrieval process is a nonlinear ill-posed problem. The Fresnel diff...
Phase retrieval finds applications in various optical imaging modalities such as X-ray crystallograp...
We consider the problem of recovering signals from their power spectral densities. This is a classi...
We address the problem of reconstructing a sparse signal from its DFT magnitude. We refer to this pr...
We address the problem of phase retrieval, which is frequently encountered in optical imaging. The m...
We address the problem of phase retrieval, which is frequently encountered in optical imaging. The m...
We address the reconstruction problem in frequency-domain optical-coherence tomography (FDOCT) from ...
We address the reconstruction problem in frequency-domain optical-coherence tomography (FDOCT) from ...
For a multilayered specimen, the back-scattered signal in frequency-domain optical-coherence tomogra...
Recovering signals from their Fourier transform magnitudes is a classical problem referred to as pha...
Recovering signals from their Fourier transform magnitudes is a classical problem referred to as pha...
The problem of signal recovery from its Fourier transform magnitude is of paramount importance in v...
We consider a computational superresolution inverse diffraction problem for phase retrieval from pha...
The problem of signal recovery from its Fourier transform magnitude, or equivalently, autocor-relati...
We propose a probabilistic model for sparse signal reconstruction and develop several novel algorith...
International audienceThe phase retrieval process is a nonlinear ill-posed problem. The Fresnel diff...
Phase retrieval finds applications in various optical imaging modalities such as X-ray crystallograp...
We consider the problem of recovering signals from their power spectral densities. This is a classi...
We address the problem of reconstructing a sparse signal from its DFT magnitude. We refer to this pr...
We address the problem of phase retrieval, which is frequently encountered in optical imaging. The m...
We address the problem of phase retrieval, which is frequently encountered in optical imaging. The m...
We address the reconstruction problem in frequency-domain optical-coherence tomography (FDOCT) from ...
We address the reconstruction problem in frequency-domain optical-coherence tomography (FDOCT) from ...
For a multilayered specimen, the back-scattered signal in frequency-domain optical-coherence tomogra...
Recovering signals from their Fourier transform magnitudes is a classical problem referred to as pha...
Recovering signals from their Fourier transform magnitudes is a classical problem referred to as pha...
The problem of signal recovery from its Fourier transform magnitude is of paramount importance in v...
We consider a computational superresolution inverse diffraction problem for phase retrieval from pha...
The problem of signal recovery from its Fourier transform magnitude, or equivalently, autocor-relati...
We propose a probabilistic model for sparse signal reconstruction and develop several novel algorith...
International audienceThe phase retrieval process is a nonlinear ill-posed problem. The Fresnel diff...
Phase retrieval finds applications in various optical imaging modalities such as X-ray crystallograp...
We consider the problem of recovering signals from their power spectral densities. This is a classi...