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Learning from Radio using Variational Quantum RF Sensing

arXiv cs.AI / 3/12/2026

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Key Points

  • The paper proposes a quantum sensing approach that uses a variational circuit to optimize a sensing probe that interacts with RF electromagnetic fields to learn about the environment.
  • It trains the quantum circuit and a learning model on ray-tracer data and conducts extensive localization experiments under realistic conditions.
  • The findings show that quantum sensors can learn from radio signals without deploying channel measurements, remain sensitive to weak or obstructed RF signals, and perform with less information than classical baselines.
  • The work suggests a path toward intelligent wireless systems that leverage quantum sensing to glean world information from RF signals.

Abstract

In modern wireless networks, radio channels serve a dual role. Whilst their primary function is to carry bits of information from a transmitter to a receiver, the intrinsic sensitivity of transmitted signals to the physical structure of the environment makes the channel a powerful source of knowledge about the world. In this paper, we consider an agent that learns about its environment using a quantum sensing probe, optimised using a quantum circuit, which interacts with the radio-frequency (RF) electromagnetic field. We use data obtained from a ray-tracer to train the quantum circuit and learning model and we provide extensive experiments under realistic conditions on a localisation task. We show that using quantum sensors to learn from radio signals can enable intelligent systems that require no channel measurements at deployment, remain sensitive to weak and obstructed RF signals, and can learn about the world despite operating with strictly less information than classical baselines.