In this paper, we employ a deep convolutional neural network for the solution of the phase retrieval problem in a lensless optical system from a single observation. We utilize U-net-like structured DCNN to reconstruct phase from the amplitude images at the sensor plane, and after applying computational backpropagation, the complex objects’ amplitude is reconstructed at the object plane. Results are demonstrated by simulation experiments.publishedVersionPeer reviewe
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...
In this paper, we employ a deep convolutional neural network for the solution of the phase retrieval...
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...
Adaptive optics are widely used to correct the wavefront distortion imposed by atmospheric turbulenc...
Adaptive optics are widely used to correct the wavefront distortion imposed by atmospheric turbulenc...
Phase-retrieval techniques aim to recover the original signal from just the modulus of its Fourier t...
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...
© 2019 SPIE. PhENN is a convolutional deep neural network that reconstructs quantitative phase image...
© 2019 SPIE. PhENN is a convolutional deep neural network that reconstructs quantitative phase image...
Phase recovery (PR) refers to calculating the phase of the light field from its intensity measuremen...
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...
In this paper, we employ a deep convolutional neural network for the solution of the phase retrieval...
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...
Adaptive optics are widely used to correct the wavefront distortion imposed by atmospheric turbulenc...
Adaptive optics are widely used to correct the wavefront distortion imposed by atmospheric turbulenc...
Phase-retrieval techniques aim to recover the original signal from just the modulus of its Fourier t...
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...
© 2019 SPIE. PhENN is a convolutional deep neural network that reconstructs quantitative phase image...
© 2019 SPIE. PhENN is a convolutional deep neural network that reconstructs quantitative phase image...
Phase recovery (PR) refers to calculating the phase of the light field from its intensity measuremen...
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...