Paper
10 October 2024 Pre-trained transformer for photonic compressive sampling
Author Affiliations +
Proceedings Volume 13278, Seventh Global Intelligent Industry Conference (GIIC 2024); 1327810 (2024) https://doi.org/10.1117/12.3045069
Event: Seventh Global Intelligent Industry Conference (GIIC 2024), 2024, Shenzhen, China
Abstract
A pre-trained Transformer network is proposed for the application in temporal photonic compressive sampling, which can address the neck-strangling issues in classical compressive sampling algorithms when using random or orthogonal measurement matrices. The Transformer network is pre-trained to accommodate a diverse array of needs, and specific application requirements can be addressed by fine-tuning the network parameters to learn prior information. In this paper, we preliminarily validated the algorithm model through simulation to address the waveform measurement performance of linear frequency modulated (LFM) signals. Using a photonic compressive sampling architecture with an average sampling rate of only 40 MSa/s, the Transformer accurately realized waveform reconstruction of LFM signals with a frequency range from 0.1 to 50 GHz and an instantaneous bandwidth as large as 10 GHz under strong interference. A frequency identification error of less than 0.3 GHz was achieved, corresponding to a compression ratio of 1500:1.
(2024) Published by SPIE. Downloading of the abstract is permitted for personal use only.
Zhaoyu Li, Yamei Zhang, and Shilong Pan "Pre-trained transformer for photonic compressive sampling", Proc. SPIE 13278, Seventh Global Intelligent Industry Conference (GIIC 2024), 1327810 (10 October 2024); https://doi.org/10.1117/12.3045069
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KEYWORDS
Transformers

Education and training

Pulse signals

Electrooptical modeling

Data modeling

Matrices

Reconstruction algorithms

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