Neural-network-powered pulse reconstruction from one-dimensional interferometric correlation traces

  • Kolesnichenko P
  • Zigmantas D
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Abstract

Any ultrafast optical spectroscopy experiment is usually accompanied by the necessary routine of ultrashort-pulse characterization. The majority of pulse characterization approaches solve either a one-dimensional ( e.g. , via interferometry) or a two-dimensional ( e.g. , via frequency-resolved measurements) problem. Solution of the two-dimensional pulse-retrieval problem is generally more consistent due to the problem’s over-determined nature. In contrast, the one-dimensional pulse-retrieval problem, unless constraints are added, is impossible to solve unambiguously as ultimately imposed by the fundamental theorem of algebra. In cases where additional constraints are involved, the one-dimensional problem may be possible to solve, however, existing iterative algorithms lack generality, and often stagnate for complicated pulse shapes. Here we use a deep neural network to unambiguously solve a constrained one-dimensional pulse-retrieval problem and show the potential of fast, reliable and complete pulse characterization using interferometric correlation time traces determined by the pulses with partial spectral overlap.

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Kolesnichenko, P. V., & Zigmantas, D. (2023). Neural-network-powered pulse reconstruction from one-dimensional interferometric correlation traces. Optics Express, 31(7), 11806. https://doi.org/10.1364/oe.479638

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