International audienceWe propose the deep Gauss–Newton (DGN) algorithm. The DGN allows one to take into account the knowledge of the forward model in a deep neural network by unrolling a Gauss–Newton optimization method. No regularization or step size needs to be chosen; they are learned through convolutional neural networks. The proposed algorithm does not require an initial reconstruction and is able to retrieve simultaneously the phase and absorption from a single-distance diffraction pattern. The DGN method was applied to both simulated and experimental data and permitted large improvements of the reconstruction error and of the resolution compared with a state-of-the-art iterative method and another neural-network-based reconstruction ...
Phase retrieval, i.e., the reconstruction of phase information from intensity information, is a cent...
Phase retrieval in optical imaging refers to the recovery of a complex signal from phaseless data ac...
The non-linear equation of phase retrieval appears in many different scenarios, from X-ray imaging t...
International audienceWe propose the deep Gauss–Newton (DGN) algorithm. The DGN allows one to take i...
International audienceWe propose the deep Gauss–Newton (DGN) algorithm. The DGN allows one to take i...
International audienceWe propose the deep Gauss–Newton (DGN) algorithm. The DGN allows one to take i...
The classical phase retrieval problem is the recovery of a constrained image from the magnitude of i...
Phase retrieval approaches based on deep learning (DL) provide a framework to obtain phase informati...
Phase retrieval approaches based on deep learning (DL) provide a framework to obtain phase informati...
Phase retrieval approaches based on deep learning DL provide a framework to obtain phase informat...
Phase retrieval approaches based on deep learning DL provide a framework to obtain phase informat...
In this paper, we employ a deep convolutional neural network for the solution of the phase retrieval...
We develop a phase retrieval algorithm that utilizes the hybrid-input-output (HIO) algorithm with a ...
In this paper, we employ a deep convolutional neural network for the solution of the phase retrieval...
The reconstruction of a single-particle image from the modulus of its Fourier transform, by phase-re...
Phase retrieval, i.e., the reconstruction of phase information from intensity information, is a cent...
Phase retrieval in optical imaging refers to the recovery of a complex signal from phaseless data ac...
The non-linear equation of phase retrieval appears in many different scenarios, from X-ray imaging t...
International audienceWe propose the deep Gauss–Newton (DGN) algorithm. The DGN allows one to take i...
International audienceWe propose the deep Gauss–Newton (DGN) algorithm. The DGN allows one to take i...
International audienceWe propose the deep Gauss–Newton (DGN) algorithm. The DGN allows one to take i...
The classical phase retrieval problem is the recovery of a constrained image from the magnitude of i...
Phase retrieval approaches based on deep learning (DL) provide a framework to obtain phase informati...
Phase retrieval approaches based on deep learning (DL) provide a framework to obtain phase informati...
Phase retrieval approaches based on deep learning DL provide a framework to obtain phase informat...
Phase retrieval approaches based on deep learning DL provide a framework to obtain phase informat...
In this paper, we employ a deep convolutional neural network for the solution of the phase retrieval...
We develop a phase retrieval algorithm that utilizes the hybrid-input-output (HIO) algorithm with a ...
In this paper, we employ a deep convolutional neural network for the solution of the phase retrieval...
The reconstruction of a single-particle image from the modulus of its Fourier transform, by phase-re...
Phase retrieval, i.e., the reconstruction of phase information from intensity information, is a cent...
Phase retrieval in optical imaging refers to the recovery of a complex signal from phaseless data ac...
The non-linear equation of phase retrieval appears in many different scenarios, from X-ray imaging t...