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Autori principali: Linne, Karl C., Uemura, Sho, Ji, Yue, Zang, Allen, Chin, Ian, Di Federico, Martin, Cancelo, Gustavo, Quaranta, Orlando, Roy, Debashri
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2509.26315
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author Linne, Karl C.
Uemura, Sho
Ji, Yue
Zang, Allen
Chin, Ian
Di Federico, Martin
Cancelo, Gustavo
Quaranta, Orlando
Roy, Debashri
author_facet Linne, Karl C.
Uemura, Sho
Ji, Yue
Zang, Allen
Chin, Ian
Di Federico, Martin
Cancelo, Gustavo
Quaranta, Orlando
Roy, Debashri
contents Reliable single photon detection is the foundation for practical quantum communication and networking. However, today's superconducting nanowire single photon detector(SNSPD) inherently fails to distinguish between genuine photon events and dark counts, leading to degraded fidelity in long-distance quantum communication. In this work, we introduce PhotonIDs, a machine learning-powered photon identification system that is the first end-to-end solution for real-time discrimination between photons and dark count based on full SNSPD readout signal waveform analysis. PhotonIDs ~demonstrates: 1) an FPGA-based high-speed data acquisition platform that selectively captures the full waveform of signal only while filtering out the background data in real time; 2) an efficient signal preprocessing pipeline, and a novel pseudo-position metric that is derived from the physical temporal-spatial features of each detected event; 3) a hybrid machine learning model with near 98% accuracy achieved on photon/dark count classification. Additionally, proposed PhotonIDs ~ is evaluated on the dark count elimination performance with two real-world case studies: (1) 20 km quantum link, and (2) Erbium ion-based photon emission system. Our result demonstrates that PhotonIDs ~could improve more than 31.2 times of signal-noise-ratio~(SNR) on dark count elimination. PhotonIDs ~ marks a step forward in noise-resilient quantum communication infrastructure.
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spellingShingle PhotonIDs: ML-Powered Photon Identification System for Dark Count Elimination
Linne, Karl C.
Uemura, Sho
Ji, Yue
Zang, Allen
Chin, Ian
Di Federico, Martin
Cancelo, Gustavo
Quaranta, Orlando
Roy, Debashri
Quantum Physics
Reliable single photon detection is the foundation for practical quantum communication and networking. However, today's superconducting nanowire single photon detector(SNSPD) inherently fails to distinguish between genuine photon events and dark counts, leading to degraded fidelity in long-distance quantum communication. In this work, we introduce PhotonIDs, a machine learning-powered photon identification system that is the first end-to-end solution for real-time discrimination between photons and dark count based on full SNSPD readout signal waveform analysis. PhotonIDs ~demonstrates: 1) an FPGA-based high-speed data acquisition platform that selectively captures the full waveform of signal only while filtering out the background data in real time; 2) an efficient signal preprocessing pipeline, and a novel pseudo-position metric that is derived from the physical temporal-spatial features of each detected event; 3) a hybrid machine learning model with near 98% accuracy achieved on photon/dark count classification. Additionally, proposed PhotonIDs ~ is evaluated on the dark count elimination performance with two real-world case studies: (1) 20 km quantum link, and (2) Erbium ion-based photon emission system. Our result demonstrates that PhotonIDs ~could improve more than 31.2 times of signal-noise-ratio~(SNR) on dark count elimination. PhotonIDs ~ marks a step forward in noise-resilient quantum communication infrastructure.
title PhotonIDs: ML-Powered Photon Identification System for Dark Count Elimination
topic Quantum Physics
url https://arxiv.org/abs/2509.26315