Quantum computational sensing using quantum signal processing, quantum neural networks, and Hamiltonian engineering
Saeed A. Khan, Sridhar Prabhu, Logan G. Wright, Peter L. McMahon

TL;DR
This paper demonstrates how quantum signal processing and neural networks can be integrated into quantum sensing to improve accuracy in classifying signals, even with small quantum systems, through optimized protocols and simulations.
Contribution
It introduces a novel approach combining quantum algorithms with sensing, enabling high-accuracy classification with minimal quantum resources and accounting for quantum noise.
Findings
Quantum algorithms enhance sensing accuracy by over 20 percentage points.
Protocols work effectively with small quantum systems, including single qubits.
Optimized circuit parameters enable accurate results with a single measurement shot.
Abstract
Combining quantum sensing with quantum computing can lead to quantum computational sensors that are able to more efficiently extract task-specific information from physical signals than is possible otherwise. Early examples of quantum computational sensing (QCS) have largely focused on protocols where only a single sensing operation appears before measurement -- with an exception being the recent application of Grover's algorithm to signal detection. In this paper we present, in theory and numerical simulations, the application of two quantum algorithms -- quantum signal processing and quantum neural networks -- to various binary and multiclass machine-learning classification tasks in sensing. Here sensing operations are interleaved with computing operations, giving rise to nonlinear functions of the sensed signals. We have evaluated tasks based on static and time-varying signals,…
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