Estimation of pure quantum states in high dimension at the limit of
quantum accuracy through complex optimization and statistical inference
- URL: http://arxiv.org/abs/2007.01398v1
- Date: Thu, 2 Jul 2020 21:33:16 GMT
- Title: Estimation of pure quantum states in high dimension at the limit of
quantum accuracy through complex optimization and statistical inference
- Authors: Leonardo Zambrano, Luciano Pereira, Sebastian Niklitschek, and Aldo
Delgado
- Abstract summary: Quantum tomography has become a key tool for the assessment of quantum states, processes, and devices.
In the case of mixed states of a single 2-dimensional quantum system adaptive methods have been recently introduced that achieve the theoretical accuracy limit deduced by Hayashi and Gill and Massar.
Here we present an adaptive tomographic method and show through numerical simulations, that it is difficult to approach the fundamental accuracy of pure quantum states in high dimension.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Quantum tomography has become a key tool for the assessment of quantum
states, processes, and devices. This drives the search for tomographic methods
that achieve greater accuracy. In the case of mixed states of a single
2-dimensional quantum system adaptive methods have been recently introduced
that achieve the theoretical accuracy limit deduced by Hayashi and Gill and
Massar. However, accurate estimation of higher-dimensional quantum states
remains poorly understood. This is mainly due to the existence of incompatible
observables, which makes multiparameter estimation difficult. Here we present
an adaptive tomographic method and show through numerical simulations that,
after a few iterations, it is asymptotically approaching the fundamental
Gill-Massar lower bound for the estimation accuracy of pure quantum states in
high dimension. The method is based on a combination of stochastic optimization
on the field of the complex numbers and statistical inference, exceeds the
accuracy of any mixed-state tomographic method, and can be demonstrated with
current experimental capabilities. The proposed method may lead to new
developments in quantum metrology.
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