Learning to decompose the modes in few-mode fibers with deep convolutional neural network
Published 2019 View Full Article
- Home
- Publications
- Publication Search
- Publication Details
Title
Learning to decompose the modes in few-mode fibers with deep convolutional neural network
Authors
Keywords
-
Journal
OPTICS EXPRESS
Volume 27, Issue 7, Pages 10127
Publisher
The Optical Society
Online
2019-03-28
DOI
10.1364/oe.27.010127
References
Ask authors/readers for more resources
Related references
Note: Only part of the references are listed.- Adaptive Mode Control in 4- and 17-Mode Fibers
- (2018) Tong Qiu et al. IEEE PHOTONICS TECHNOLOGY LETTERS
- Imaging through glass diffusers using densely connected convolutional networks
- (2018) Shuai Li et al. Optica
- Analyzing modal power in multi-mode waveguide via machine learning
- (2018) Ang Liu et al. OPTICS EXPRESS
- Deep speckle correlation: a deep learning approach toward scalable imaging through scattering media
- (2018) Yunzhe Li et al. Optica
- Learning to see through multimode fibers
- (2018) Navid Borhani et al. Optica
- Spatial beam self-cleaning in multimode fibres
- (2017) K. Krupa et al. Nature Photonics
- Multimode fiber modal decomposition based on hybrid genetic global optimization algorithm
- (2017) Lei Li et al. OPTICS EXPRESS
- Fast modal decomposition for optical fibers using digital holography
- (2017) Meng Lyu et al. Scientific Reports
- Deep-learning-based ghost imaging
- (2017) Meng Lyu et al. Scientific Reports
- Observation of multimode solitons in few-mode fiber
- (2016) Zimu Zhu et al. OPTICS LETTERS
- Modal Analysis of Fiber Laser Beam by Using Stochastic Parallel Gradient Descent Algorithm
- (2015) Liangjin Huang et al. IEEE PHOTONICS TECHNOLOGY LETTERS
- Controllable spatiotemporal nonlinear effects in multimode fibres
- (2015) Logan G. Wright et al. Nature Photonics
- Real-time mode decomposition for few-mode fiber based on numerical method
- (2015) Liangjin Huang et al. OPTICS EXPRESS
- Adaptive mode control of a few-mode fiber by real-time mode decomposition
- (2015) Liangjin Huang et al. OPTICS EXPRESS
- Sub-second mode measurement of fibers using C^2 imaging
- (2014) Jeff Demas et al. OPTICS EXPRESS
- Mode-resolved gain analysis and lasing in multi-supermode multi-core fiber laser
- (2014) Clémence Jollivet et al. OPTICS EXPRESS
- Comparative analysis of numerical methods for the mode analysis of laser beams
- (2013) Robert Brüning et al. APPLIED OPTICS
- High-power fibre lasers
- (2013) Cesar Jauregui et al. Nature Photonics
- Space-division multiplexing in optical fibres
- (2013) D. J. Richardson et al. Nature Photonics
- 110x110 optical mode transfer matrix inversion
- (2013) Joel Carpenter et al. OPTICS EXPRESS
- Mode resolved bend loss in few-mode optical fibers
- (2013) Christian Schulze et al. OPTICS EXPRESS
- Modal characterization of fiber-to-fiber coupling processes
- (2013) Daniel Flamm et al. OPTICS LETTERS
- Optical solitons in graded-index multimode fibres
- (2013) W. H. Renninger et al. Nature Communications
- Fast M2 measurement for fiber beams based on modal analysis
- (2012) Daniel Flamm et al. APPLIED OPTICS
- Degenerate Mode-Group Division Multiplexing
- (2012) Joel Carpenter et al. JOURNAL OF LIGHTWAVE TECHNOLOGY
- Wavefront reconstruction by modal decomposition
- (2012) Christian Schulze et al. OPTICS EXPRESS
- High-speed modal decomposition of mode instabilities in high-power fiber lasers
- (2011) Fabian Stutzki et al. OPTICS LETTERS
- Fiber-modes and fiber-anisotropy characterization using low-coherence interferometry
- (2009) Y. Z. Ma et al. APPLIED PHYSICS B-LASERS AND OPTICS
- Complete modal decomposition for optical fibers using CGH-based correlation filters
- (2009) Thomas Kaiser et al. OPTICS EXPRESS
- Spatially and spectrally resolved imaging of modal content in large-mode-area fibers
- (2008) J. W. Nicholson et al. OPTICS EXPRESS
Create your own webinar
Interested in hosting your own webinar? Check the schedule and propose your idea to the Peeref Content Team.
Create NowAsk a Question. Answer a Question.
Quickly pose questions to the entire community. Debate answers and get clarity on the most important issues facing researchers.
Get Started