INTERDISCIPLINARY PHYSICS AND RELATED AREAS OF SCIENCE AND TECHNOLOGY |
Prev
Next
|
|
|
Convolutional neural network for transient grating frequency-resolved optical gating trace retrieval and its algorithm optimization |
Siyuan Xu(许思源)1,2, Xiaoxian Zhu(朱孝先)2,3, Ji Wang(王佶)2,4, Yuanfeng Li(李远锋)1,2, Yitan Gao(高亦谈)2,3, Kun Zhao(赵昆)2,5,†, Jiangfeng Zhu(朱江峰)1,‡, Dacheng Zhang(张大成)1, Yunlin Chen(陈云琳)4, and Zhiyi Wei(魏志义)2,3,5 |
1 School of Physics and Optoelectronic Engineering, Xidian University, Xi'an 710071 China; 2 Beijing National Laboratory for Condensed Matter Physics, Institute of Physics, Chinese Academy of Sciences, Beijing 100190, China; 3 University of Chinese Academy of Sciences, Beijing 100049, China; 4 Institute of Applied Micro-Nano Materials, School of Science, Beijing Jiaotong University, Beijing 100044, China; 5 Songshan Lake Material Laboratory, Dongguan 523808, China |
|
|
Abstract A convolutional neural network is employed to retrieve the time-domain envelop and phase of few-cycle femtosecond pulses from transient-grating frequency-resolved optical gating (TG-FROG) traces. We use theoretically generated TG-FROG traces to complete supervised trainings of the convolutional neural networks, then use similarly generated traces not included in the training dataset to test how well the networks are trained. Accurate retrieval of such traces by the neural network is realized. In our case, we find that networks with exponential linear unit (ELU) activation function perform better than those with leaky rectified linear unit (LRELU) and scaled exponential linear unit (SELU). Finally, the issues that need to be addressed for the retrieval of experimental data by this method are discussed.
|
Received: 24 February 2021
Revised: 03 March 2021
Accepted manuscript online: 23 March 2021
|
PACS:
|
84.37.+q
|
(Measurements in electric variables (including voltage, current, resistance, capacitance, inductance, impedance, and admittance, etc.))
|
|
84.35.+i
|
(Neural networks)
|
|
07.05.Pj
|
(Image processing)
|
|
42.65.Hw
|
(Phase conjugation; photorefractive and Kerr effects)
|
|
Fund: Project supported by the National Key R&D Program of China (Grant No. 2017YFB0405202) and the National Natural Science Foundation of China (Grant Nos. 61690221, 91850209, and 11774277). |
Corresponding Authors:
†Corresponding author. E-mail: zhaokun@iphy.ac.cn ‡Corresponding author. E-mail: jfzhu@xidian.edu.cn
|
Cite this article:
Siyuan Xu(许思源), Xiaoxian Zhu(朱孝先), Ji Wang(王佶), Yuanfeng Li(李远锋), Yitan Gao(高亦谈), Kun Zhao(赵昆), Jiangfeng Zhu(朱江峰), Dacheng Zhang(张大成), Yunlin Chen(陈云琳), and Zhiyi Wei(魏志义) Convolutional neural network for transient grating frequency-resolved optical gating trace retrieval and its algorithm optimization 2021 Chin. Phys. B 30 048402
|
1 Jimenez R, Fleming G R, Kumar P V and Maroncelli M 1994 Nature 369 471 2 Hentschel M, Kienberger R, Spielmann C, Reider G A, Milosevic N, Brabec T, Corkum P, Heinzmann U, Drescher M and Krausz F 2001 Nature 414 509 3 Li J, Ren X, Yin Y, Zhao K, Chew A, Cheng Y, Cunningham E, Wang Y, Hu S, Wu Y, Chini M and Chang Z 2017 Nat. Commun. 8 186 4 Reid D T, Padgett M, Mcgowan C, Sleat W E and Sibbett W 1997 Opt. Lett. 22 233 5 Kane D J and Trebino R 1993 IEEE J. Quantum Electron 29 571 6 Trebino R, Delong K W, Fittinghoff D N, Sweetser J N, Krumbügel M A, Richman B A and Kane D J 1997 Rev. Sci. Instrum. 68 3277 7 Zahavy T, Dikopoltsev A, Moss D, Haham G I, Cohen O, Mannor S and Segev M 2018 Optica 5 666 8 White J and Chang Z 2019 Opt. Express 27 4799 9 Krizhevsky A, Sutskever I and Hinton G E 2017 Commun. ACM 60 84 10 Lecun Y, Bengio Y and Hinton G 2015 Nature 521 436 11 Sweetser J N, Fittinghoff D N and Trebino R 1997 Opt. Lett. 22 519 12 Eichler H J, Gunther P and Pohl D W1986 Laser-Induced Dynamic Gratings(Berlin: Springer-Verlag) |
No Suggested Reading articles found! |
|
|
Viewed |
|
|
|
Full text
|
|
|
|
|
Abstract
|
|
|
|
|
Cited |
|
|
|
|
Altmetric
|
blogs
Facebook pages
Wikipedia page
Google+ users
|
Online attention
Altmetric calculates a score based on the online attention an article receives. Each coloured thread in the circle represents a different type of online attention. The number in the centre is the Altmetric score. Social media and mainstream news media are the main sources that calculate the score. Reference managers such as Mendeley are also tracked but do not contribute to the score. Older articles often score higher because they have had more time to get noticed. To account for this, Altmetric has included the context data for other articles of a similar age.
View more on Altmetrics
|
|
|