量子退火在计算机断层扫描图像重建中的应用

Kilian Dremel;Dimitri Prjamkov;Markus Firsching;Mareike Weule;Thomas Lang;Anastasia Papadaki;Stefan Kasperl;Martin Blaimer;Theobald O. J. Fuchs
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引用次数: 0

摘要

计算机断层扫描(CT)的主要困难之一是从物理物体的测量投影重建横截面图像。存在几种经典的方法来生成物体的数字表示,包括滤波反投影或同步代数重建技术。我们的研究旨在探索量子计算在工业x射线透射断层扫描领域的潜力。具体而言,本工作侧重于将类似于Nau等人(2023)提出的方法应用于真实CT数据,以证明基于二次无约束二值优化的层析重建的可行性。从模拟幻影开始,给出了模拟退火和实际退火硬件的结果,并将其应用于测量的锥束CT数据。结果表明,利用量子退火技术进行层析重建在模拟和实际应用中都是可行的。然而,目前的限制-涉及图像的最大可处理尺寸和体素值的位深度,两者都与退火硬件中密集连接的量子位的数量相关-意味着需要未来的研究来进一步改进结果。尽管这种方法还处于早期阶段,但它有潜力实现更复杂的重建,为传统的经典方法提供了一种替代方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Utilizing Quantum Annealing in Computed Tomography Image Reconstruction
One of the primary difficulties in computed tomography (CT) is reconstructing cross-sectional images from measured projections of a physical object. There exist several classical methods for this task of generating a digital representation of the object, including filtered backprojection or simultaneous algebraic reconstruction technique. Our research aims to explore the potential of quantum computing in the field of industrial X-ray transmission tomography. Specifically, this work focuses on the application of a method similar to that proposed by Nau et al. (2023) on real CT data to demonstrate the feasibility of quadratic-unconstrained-binary-optimization-based tomographic reconstruction. Starting with simulated phantoms, results with simulated annealing as well as real annealing hardware are shown, leading to the application on measured cone-beam CT data. The results demonstrate that tomographic reconstruction using quantum annealing is feasible for both simulated and real-world applications. Yet, current limitations—involving the maximum processable size and bit depth of voxel values of the images, both correlated with the number of densely connected qubits within the annealing hardware—imply the need of future research to further improve the results. This approach, despite its early stage, has the potential to enable more sophisticated reconstructions, providing an alternative to traditional classical methods.
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