We propose a label enhanced and patch based deep learning phase retrieval approach which can achieve fast and accurate phase retrieval using only several fringe patterns as training dataset. To the best of our knowledge, it is the first time that the advantages of the label enhancement and patch strategy for deep learning based phase retrieval are demonstrated in fringe projection. In the proposed method, the enhanced labeled data in training dataset is designed to learn the mapping between the input fringe pattern and the output enhanced fringe part of the deep neural network (DNN). Moreover, the training data is cropped into small overlapped patches to expand the training samples for the DNN. The performance of the proposed approach is ve...
Fringe pattern analysis is the central aspect of numerous optical measurement methods, e.g., interfe...
Deep learning has been proven to achieve ground-breaking accuracy in various tasks. In this paper, w...
Fringe projection systems have been widely applied in three-dimensional (3D) shape measurements. One...
Phase retrieval from single frame projection fringe patterns, a fundamental and challenging problem ...
Phase retrieval approaches based on deep learning DL provide a framework to obtain phase informat...
Fast-speed and high-accuracy three-dimensional (3D) shape measurement has been the goal all along in...
Fringe projection profilometry (FPP) is widely applied to 3D measurements, owing to its advantages o...
Recently, deep learning has attracted more and more attention in phase unwrapping of fringe projecti...
In this paper, deep learning as a novel algorithm is proposed to reduce the noise of the fringe patt...
The classical phase retrieval problem is the recovery of a constrained image from the magnitude of i...
The phase extraction neural network (PhENN) [Optica 4, 1117 (2017)] is a computational architecture,...
Phase recovery (PR) refers to calculating the phase of the light field from its intensity measuremen...
In an optical measurement system using an interferometer, a phase extracting technique from interfer...
Phase retrieval approaches based on deep learning (DL) provide a framework to obtain phase informati...
International audienceWe propose the deep Gauss–Newton (DGN) algorithm. The DGN allows one to take i...
Fringe pattern analysis is the central aspect of numerous optical measurement methods, e.g., interfe...
Deep learning has been proven to achieve ground-breaking accuracy in various tasks. In this paper, w...
Fringe projection systems have been widely applied in three-dimensional (3D) shape measurements. One...
Phase retrieval from single frame projection fringe patterns, a fundamental and challenging problem ...
Phase retrieval approaches based on deep learning DL provide a framework to obtain phase informat...
Fast-speed and high-accuracy three-dimensional (3D) shape measurement has been the goal all along in...
Fringe projection profilometry (FPP) is widely applied to 3D measurements, owing to its advantages o...
Recently, deep learning has attracted more and more attention in phase unwrapping of fringe projecti...
In this paper, deep learning as a novel algorithm is proposed to reduce the noise of the fringe patt...
The classical phase retrieval problem is the recovery of a constrained image from the magnitude of i...
The phase extraction neural network (PhENN) [Optica 4, 1117 (2017)] is a computational architecture,...
Phase recovery (PR) refers to calculating the phase of the light field from its intensity measuremen...
In an optical measurement system using an interferometer, a phase extracting technique from interfer...
Phase retrieval approaches based on deep learning (DL) provide a framework to obtain phase informati...
International audienceWe propose the deep Gauss–Newton (DGN) algorithm. The DGN allows one to take i...
Fringe pattern analysis is the central aspect of numerous optical measurement methods, e.g., interfe...
Deep learning has been proven to achieve ground-breaking accuracy in various tasks. In this paper, w...
Fringe projection systems have been widely applied in three-dimensional (3D) shape measurements. One...