ABSTRACT
This paper proposes a machine learning method to characterize photonic states via a simple optical circuit and data processing of photon number distributions, such as photonic patterns. The input states consist of two coherent states used as references and a two-mode unknown state to be studied. We successfully trained supervised learning algorithms that can predict the degree of entanglement in the two-mode state as well as perform the full tomography of one photonic mode, obtaining satisfactory values in the considered regression metrics.
DETAILS
- Research Type Article
- RESEARCH YEAR 2022
- Journal Name Quantum Science and Technology
- Authors R. Wang, C. Hernani-Morales, J. D. Martín-Guerrero, E. Solano, and F. Albarrán-Arriagada
- DOI 10.1088/2058-9565/ac3460