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Trapped Ion Quantum Computing Quantum Machine Learning

Quantum Optical Neuron for Image Classification via Multiphoton Interference

arXiv
Authors: Giorgio Minati, Simone Roncallo, Simone Scrofana, Angela Rosy Morgillo, Nicoló Spagnolo, Chiara Macchiavello, Lorenzo Maccone, Valeria Cimini, Fabio Sciarrino

Year

2026

Paper ID

38967

Status

Preprint

Abstract Read

~2 min

Abstract Words

203

Citations

N/A

Abstract

The rapid growth of machine learning is increasingly constrained by the energy and bandwidth limits of classical hardware. Optical and quantum technologies offer an alternative route, enabling high-dimensional, parallel information processing directly in the physical layer, particularly suited for imaging tasks. In this context, quantum photonic platforms provide both a natural mechanism for computing inner products and a promising path to energy-efficient inference in photon-limited regimes. Here, we experimentally demonstrate a camera-free quantum-optical images classifier that performs inference directly at the measurement layer using Hong-Ou-Mandel (HOM) interference of spatially programmable single photons. Two-photon coincidences directly report the overlap between an input image mode and a learned template, replacing pixel-resolved acquisition with a single global measurement. We realize both a single-perceptron quantum optical neuron and a two-neuron shallow network, achieving high accuracy on benchmark datasets with strong robustness to experimental noise and minimal hardware complexity. With a fixed measurement budget, performance remains insensitive to input resolution, demonstrating intrinsic robustness to the number of pixels, which would be impossible in a classical framework. This approach paves the way toward neuromorphic quantum photonic processors capable of extracting task-relevant information directly from HOM interference, with promising applications in remote object recognition, low-signal sensing, and photon-starved biological microscopy.

Why This Paper Matters

  • This paper contributes to the Quantum Machine Learning research area in the Quantum Articles archive.
  • It adds a 2026 reference point for readers tracking recent quantum research.
  • The rapid growth of machine learning is increasingly constrained by the energy and bandwidth limits of classical hardware.

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