We introduce a general model for a network of quantum sensors, and we use this model to consider the following question: When can entanglement between the sensors, and/or global measurements, enhance the precision with which the network can measure a set of unknown parameters? We rigorously answer this question by presenting precise theorems proving that for a broad class of problems there is, at most, a very limited intrinsic advantage to using entangled states or global measurements. Moreover, for many estimation problems separable states and local measurements are optimal, and can achieve the ultimate quantum limit on the estimation uncertainty. This immediately implies that there are broad conditions under which simultaneous estimation ...
This thesis aims to help in bridging the gap between the ideals of theoretical quantum metrology and...
We consider bipartite systems as versatile probes for the estimation of transformations acting local...
Quantum metrology often deals with the simultaneous estimation of multiple parameters, but the optim...
We introduce a general model for a network of quantum sensors, and we use this model to consider the...
Quantum metrology takes advantage of nonclassical resources such as squeezing and entanglement to ac...
The theoretical framework for networked quantum sensing has been developed to a great extent in the ...
We derive fundamental bounds on the maximal achievable precision in multiparameter noisy quantum met...
Careful tailoring the quantum state of probes offers the capability of investigating matter at unpre...
A distributed sensing protocol uses a network of local sensing nodes to estimate a global feature of...
Quantum metrology aims to exploit quantum phenomena to overcome classical limitations in the estimat...
We consider the problem of estimating multiple phases using a multi-mode interferometer. In this se...
We consider the problem of estimating multiple phases using a multi-mode interferometer. In this set...
We consider distributed sensing of nonlocal quantities. We introduce quantum enhanced protocols to d...
A quantum theory of multiphase estimation is crucial for quantum-enhanced sensing and imaging and ma...
We consider the problem of estimating multiple phases using a multi-mode interferometer. In this set...
This thesis aims to help in bridging the gap between the ideals of theoretical quantum metrology and...
We consider bipartite systems as versatile probes for the estimation of transformations acting local...
Quantum metrology often deals with the simultaneous estimation of multiple parameters, but the optim...
We introduce a general model for a network of quantum sensors, and we use this model to consider the...
Quantum metrology takes advantage of nonclassical resources such as squeezing and entanglement to ac...
The theoretical framework for networked quantum sensing has been developed to a great extent in the ...
We derive fundamental bounds on the maximal achievable precision in multiparameter noisy quantum met...
Careful tailoring the quantum state of probes offers the capability of investigating matter at unpre...
A distributed sensing protocol uses a network of local sensing nodes to estimate a global feature of...
Quantum metrology aims to exploit quantum phenomena to overcome classical limitations in the estimat...
We consider the problem of estimating multiple phases using a multi-mode interferometer. In this se...
We consider the problem of estimating multiple phases using a multi-mode interferometer. In this set...
We consider distributed sensing of nonlocal quantities. We introduce quantum enhanced protocols to d...
A quantum theory of multiphase estimation is crucial for quantum-enhanced sensing and imaging and ma...
We consider the problem of estimating multiple phases using a multi-mode interferometer. In this set...
This thesis aims to help in bridging the gap between the ideals of theoretical quantum metrology and...
We consider bipartite systems as versatile probes for the estimation of transformations acting local...
Quantum metrology often deals with the simultaneous estimation of multiple parameters, but the optim...