论文标题

量子压缩传感:数学机械,量子算法和量子电路

Quantum Compressive Sensing: Mathematical Machinery, Quantum Algorithms, and Quantum Circuitry

论文作者

Sherbert, Kyle, Naimipour, Naveed, Safavi, Haleh, Shaw, Harry, Soltanalian, Mojtaba

论文摘要

压缩传感是一种传感协议,通过利用已知的感兴趣信号结构(通常表现为信号稀疏性),从相对较少的测量中促进了大型信号的重建。压缩传感在诸如通信和图像重建等领域的应用程序库曲目源于使用非线性优化的传统方法,即通过选择最低的重量(即最大稀疏性)信号一致与所有获取的测量相一致,从而利用非线性优化来利用倍率假设。文献中最新的努力相反,请考虑一种以数据为基础的方法,培训张量网络以了解感兴趣的信号结构。训练有素的张量网络已更新为“项目”状态到一个与所采用的测量相一致的状态,然后按站点对其进行采样以“猜测”原始信号。在本文中,我们通过制定替代的“量子”协议来利用此计算协议,其中张量网络的状态是一组纠缠量子的量子状态。因此,我们介绍了在量子计算机上实施培训,投影和采样步骤所需的相关算法和量子电路。我们通过模拟拟议的电路,以一种小的,质量成像的地球森林成像模型来补充我们的理论结果。我们的结果表明,随着量子技术继续引起新的飞跃,量子,数据驱动的压缩传感方法可能具有巨大的希望。

Compressive sensing is a sensing protocol that facilitates reconstruction of large signals from relatively few measurements by exploiting known structures of signals of interest, typically manifested as signal sparsity. Compressive sensing's vast repertoire of applications in areas such as communications and image reconstruction stems from the traditional approach of utilizing non-linear optimization to exploit the sparsity assumption by selecting the lowest-weight (i.e. maximum sparsity) signal consistent with all acquired measurements. Recent efforts in the literature consider instead a data-driven approach, training tensor networks to learn the structure of signals of interest. The trained tensor network is updated to "project" its state onto one consistent with the measurements taken, and is then sampled site by site to "guess" the original signal. In this paper, we take advantage of this computing protocol by formulating an alternative "quantum" protocol, in which the state of the tensor network is a quantum state over a set of entangled qubits. Accordingly, we present the associated algorithms and quantum circuits required to implement the training, projection, and sampling steps on a quantum computer. We supplement our theoretical results by simulating the proposed circuits with a small, qualitative model of LIDAR imaging of earth forests. Our results indicate that a quantum, data-driven approach to compressive sensing, may have significant promise as quantum technology continues to make new leaps.

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