Physical-Layer Machine Learning with Multimode Interferometric Photon Counting
Jia-Jin Feng, Anthony J. Brady, Quntao Zhuang

TL;DR
This paper introduces a quantum-enhanced sensing protocol combining multimode interferometric photon counting and entanglement to improve weak signal detection and analysis, outperforming traditional methods.
Contribution
It presents a unified quantum sensing protocol that integrates machine learning with multimode interferometric photon counting and entanglement, advancing weak signal analysis.
Findings
Outperforms conventional homodyne detection in PCA and CCA tasks.
Achieves noise reduction below vacuum levels.
Enhances signal extraction using entanglement and quantum measurements.
Abstract
The learning of the physical world relies on sensing and data post-processing. When the signals are weak, multidimensional and correlated, the performance of learning is often bottlenecked by the quality of sensors, calling for integrating quantum sensing into the learning of such physical-layer data. An example of such a learning scenario is the stochastic quadrature displacements of electromagnetic fields, modeling optomechanical force sensing, radiofrequency photonic sensing, microwave cavity weak signal sensing, and other applications. We propose a unified protocol that combines machine learning with interferometric photon counting to reduce noise and reveal correlations. By applying variational quantum learning with multimode programmable quantum measurements, we enhance signal extraction. Our results show that multimode interferometric photon counting outperforms conventional…
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