This is the final version. Available from the American Physical Society via the DOI in this recordA longstanding problem in quantum metrology is how to extract as much information as possible in realistic scenarios with not only multiple unknown parameters, but also limited measurement data and some degree of prior information. Here we present a practical solution to this: We derive a Bayesian multi-parameter quantum bound, construct the optimal measurement when our bound can be saturated for a single shot, and consider experiments involving a repeated sequence of these measurements. Our method properly accounts for the number of measurements and the degree of prior information, and we illustrate our ideas with a qubit sensing network ...
Many results in the quantum metrology literature use the Cramér-Rao bound and the Fisher information...
Quantum metrology aims to exploit quantum phenomena to overcome classical limitations in the estimat...
It is well known in Bayesian estimation theory that the conditional estimator attains the minimum me...
A longstanding problem in quantum metrology is how to extract as much information as possible in rea...
Quantum parameter estimation offers solid conceptual grounds for the design of sensors enjoying quan...
Quantum parameter estimation offers solid conceptual grounds for the design of sensors enjoying quan...
Quantum parameter estimation offers solid conceptual grounds for the design of sensors enjoying quan...
Science relies on our practical ability to extract information from reality, since processing this i...
Only with the simultaneous estimation of multiple parameters are the quantum aspects of metrology fu...
Quantum metrology protocols are typically designed around the assumption that we have an abundance o...
Quantum parameter estimation offers solid conceptual grounds for the design of sensors enjoying quan...
Quantum parameter estimation offers solid conceptual grounds for the design of sensors enjoying quan...
Quantum parameter estimation offers solid conceptual grounds for the design of sensors enjoying quan...
Achieving quantum-enhanced performances when measuring unknown quantities requires developing suitab...
Many results in the quantum metrology literature use the Cramér-Rao bound and the Fisher information...
Many results in the quantum metrology literature use the Cramér-Rao bound and the Fisher information...
Quantum metrology aims to exploit quantum phenomena to overcome classical limitations in the estimat...
It is well known in Bayesian estimation theory that the conditional estimator attains the minimum me...
A longstanding problem in quantum metrology is how to extract as much information as possible in rea...
Quantum parameter estimation offers solid conceptual grounds for the design of sensors enjoying quan...
Quantum parameter estimation offers solid conceptual grounds for the design of sensors enjoying quan...
Quantum parameter estimation offers solid conceptual grounds for the design of sensors enjoying quan...
Science relies on our practical ability to extract information from reality, since processing this i...
Only with the simultaneous estimation of multiple parameters are the quantum aspects of metrology fu...
Quantum metrology protocols are typically designed around the assumption that we have an abundance o...
Quantum parameter estimation offers solid conceptual grounds for the design of sensors enjoying quan...
Quantum parameter estimation offers solid conceptual grounds for the design of sensors enjoying quan...
Quantum parameter estimation offers solid conceptual grounds for the design of sensors enjoying quan...
Achieving quantum-enhanced performances when measuring unknown quantities requires developing suitab...
Many results in the quantum metrology literature use the Cramér-Rao bound and the Fisher information...
Many results in the quantum metrology literature use the Cramér-Rao bound and the Fisher information...
Quantum metrology aims to exploit quantum phenomena to overcome classical limitations in the estimat...
It is well known in Bayesian estimation theory that the conditional estimator attains the minimum me...