Quantum computational displacement sensing
Sridhar Prabhu, Saeed A. Khan, Xingrui Song, Mathieu Ouellet, Ryotatsu Yanagimoto, Saswata Roy, Alen Senanian, Logan G. Wright, Valla Fatemi, Peter L. McMahon

TL;DR
This paper demonstrates quantum computational displacement sensing using superconducting circuits, showing improved classification accuracy over traditional methods by integrating quantum processing directly into the sensing task.
Contribution
It introduces a novel quantum sensing protocol that uses parameterized quantum circuits to classify displacements without estimating them first.
Findings
Achieved up to 15 percentage points higher accuracy than conventional methods.
Implemented circuits with up to 24 entangling gates and 38 parameters, trained in silico.
Experimentally validated the feasibility of quantum computational sensing on noisy superconducting hardware.
Abstract
Quantum computational sensing (QCS) combines quantum sensing with quantum computing to extract task-relevant information from the physical world. QCS can in principle achieve an accuracy advantage for specific tasks versus the alternative of raw-signal estimation using conventional quantum sensing followed by task-specific classical postprocessing. Here we report the experimental demonstration of quantum computational displacement sensing (QCDS) with a superconducting circuit comprising a qubit coupled to an oscillator. We consider binary classification sensing tasks, where the goal is to predict the class label of a single complex-valued displacement sensed once by the oscillator. Rather than estimating the displacement, our computational-sensing protocol -- using parameterized quantum circuits before and after sensing -- attempts to determine the binary class label using quantum…
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