Ma Hailan, Sun Zhenhong, Dong Daoyi, Chen Chunlin, Rabitz Herschel
IEEE Trans Cybern. 2025 Jun;55(6):2571-2582. doi: 10.1109/TCYB.2025.3556466. Epub 2025 May 16.
Quantum state tomography (QST) is the process of reconstructing the state of a quantum system (mathematically described as a density matrix) through a series of different measurements, which can be solved by learning a parameterized function to translate experimentally measured statistics into physical density matrices. However, the specific structure of quantum measurements for characterizing a quantum state has been neglected in previous work. In this article, we explore the similarity between highly structured sentences in natural language and intrinsically structured measurements in QST. To fully leverage the intrinsic quantum characteristics involved in QST, we design a quantum-aware transformer (QAT) model to capture the complex relationship between measured frequencies and density matrices. In particular, we query quantum operators in the architecture to facilitate informative representations of quantum data and integrate the Bures distance into the loss function to evaluate quantum state fidelity, thereby enabling the reconstruction of quantum states from measured data with high fidelity. Extensive simulations and experiments (on IBM quantum computers) demonstrate the superiority of the QAT in reconstructing quantum states with favorable robustness against experimental noise.
量子态层析成像(QST)是通过一系列不同测量来重构量子系统状态(数学上描述为密度矩阵)的过程,该过程可通过学习一个参数化函数来解决,即将实验测量的统计数据转换为物理密度矩阵。然而,先前的工作忽略了用于表征量子态的量子测量的具体结构。在本文中,我们探索自然语言中高度结构化句子与QST中内在结构化测量之间的相似性。为了充分利用QST中涉及的内在量子特性,我们设计了一种量子感知变压器(QAT)模型,以捕捉测量频率与密度矩阵之间的复杂关系。特别是,我们在架构中查询量子算子,以促进量子数据的信息性表示,并将布雷斯距离整合到损失函数中以评估量子态保真度,从而能够从测量数据中以高保真度重构量子态。广泛的模拟和实验(在IBM量子计算机上)证明了QAT在重构量子态方面的优越性,对实验噪声具有良好的鲁棒性。