论文标题
通过复杂的优化和统计推断,在量子准确性极限上以高维度的纯量子状态估计
Estimation of pure quantum states in high dimension at the limit of quantum accuracy through complex optimization and statistical inference
论文作者
论文摘要
量子断层扫描已成为评估量子状态,过程和设备的关键工具。这推动了搜索达到更高准确性的层析成像方法。对于最近引入了单个二维量子系统自适应方法的混合状态,它实现了Hayashi和Gill和Massar推论的理论准确性极限。但是,对高维量子状态的准确估计仍然鲜为人知。这主要是由于存在不兼容的可观察结果,这使多参数估计变得困难。在这里,我们提出了一种自适应层析成像方法,并通过数值模拟显示,经过一些迭代,它渐近地接近了基本的g玛斯尔下限,以在高维度中纯量子状态的估计准确性。该方法基于在复数和统计推断的场上的随机优化的组合,超过了任何混合状态断层扫描方法的准确性,并且可以通过当前的实验能力来证明。提出的方法可能导致量子计量学方面的新发展。
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.