Photonic kernel machines for ultrafast spectral analysis
ORAL
Abstract
We present photonic kernel machines, a machine learning-inspired scheme for ultrafast spectral analysis of noisy radio-frequency signals from single-shot optical intensity measurements that harnesses fast photonic hardware to reach throughput rates ideally well above the gigahertz. We first theoretically describe some of their key underlying principles and then numerically illustrate their performance on a photonic lattice-based implementation. We apply this model both to picosecond pulsed signals, on an energy-spectral-density estimation and a shape classification tasks, and to continuous signals, on a frequency tracking task. The presented optical-computing scheme proves robust to noise while requiring minimal control on the photonic-lattice parameters, thus making it readily implementable in realistic state-of-the-art photonic platforms.
*This work was supported by the ERC Consolidator grant NOMLI No. 770933, by ANR via the project UNIQ, and the FET flagship project PhoQuS (grant agreement ID No. 820392).
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Publication: Z. Denis, I. Favero and C. Ciuti, "Device for spectral analysis of radio frequency signals," EU Patent application EP21173660 (2021).
Z. Denis, I. Favero and C. Ciuti, "Photonic kernel machine learning for ultrafast spectral analysis," in preparation (2021).
Presenters
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Zakari Denis
- Univ de Paris