Bayesian quantum phase estimation with fixed photon states

arXiv (Cornell University)(2023)

引用 0|浏览11
暂无评分
摘要
We consider the generic form of a two-mode bosonic state $|\Psi_n\rangle$ with finite Fock expansion and fixed mean photon number to an integer $n\geq1$. The upper and lower modes of the input state $|\Psi_n\rangle$ pick up a phase $\phi$ and $-\phi$ respectively and we study the form of the optimal input state, i.e., the form of the state's Fock coefficients, such that the mean square error (MSE) for estimating $\phi$ is minimized while the MSE is always attainable by a measurement. Our setting is Bayesian, meaning that we consider $\phi$ as a random variable that follows a prior probability distribution function (PDF). For the celebrated NOON state (equal superposition of $|n0\rangle$ and $|0n\rangle$), which is a special case of the input state we consider, and for a flat prior PDF we find that the Heisenberg scaling is lost and the attainable minimum mean square error (MMSE) is found to be $\pi^2/3-1/4n^2$, which is a manifestation of the fundamental difference between the Fisherian and Bayesian approaches. Then, our numerical analysis provides the optimal form of the generic input state for fixed values of $n$ and we provide evidence that a state $|\Psi_{\tau}\rangle$ produced by mixing a Fock state with vacuum in a beam-splitter of transmissivity $\tau$ (i.e. a special case of the state $|\Psi_n\rangle$), must correspond to $\tau=0.5$. Finally, we consider an example of an adaptive technique: We consider a state of the form of $|\Psi_n\rangle$ for $n=1$. We start with a flat prior PDF, and for each subsequent step we use as prior PDF the posterior probability of the previous step, while for each step we update the optimal state and optimal measurement. We show our analysis for up to five steps, but one can allow the algorithm to run further. Finally, we conjecture the form the of the prior PDF and the optimal state for the infinite step and we calculate the corresponding MMSE.
更多
查看译文
关键词
bayesian quantum phase estimation,photon
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要