量子图像滤波及其可逆逻辑电路设计

Gaofeng Luo, She-Xiang Jiang, L. Zong
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引用次数: 1

摘要

量子信息处理可以克服经典计算的局限性。因此,利用量子计算进行图像滤波已成为一个研究热点。本文在经典图像滤波原理的基础上,提出了一种量子算法来检测和消除图像中的噪声。为此,提出并实现了一种完成图像滤波任务的量子算法。介绍了一种新型的数字图像增强量子表示方法。然后,演示了四个基本模块,即位置移位,并行cnot,并行交换和比较最大值。在这些基本模块的基础上,设计了两个可用于实现量子算法可逆逻辑电路的复合模块。基于仿真的实验结果表明了所提出的量子图像滤波方案的可行性和性能。此外,通过对计算复杂度的详细理论分析,我们的方案优于经典的量子图像滤波方案和其他现有的量子图像滤波方案。因此,它可以潜在地用于量子计算机时代的高效图像滤波。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Quantum image filtering and its reversible logic circuit design
Quantum information processing can overcome the limitations of classical computation. Consequently, image filtering using quantum computation has become a research hotspot. Here, a quantum algorithm is presented on the basis of the classical image filtering principle to detect and cancel the noise of an image. To this end, a quantum algorithm that completes the image filtering task is proposed and implemented. The novel enhanced quantum representation of digital images is introduced. Then, four basic modules, namely, position-shifting, parallel-CNOT, parallel-swap, and compare the max, are demonstrated. Two composite modules that can be utilised to realise the reversible logic circuit of the proposed quantum algorithm are designed on the basis of these basic modules. Simulation-based experimental results show the feasibility and the capabilities of the proposed quantum image filtering scheme. In addition, our proposal has outperformed its classical counterpart and other existing quantum image filtering schemes supported by detailed theoretical analysis of the computational complexity. Thus, it can potentially be used for highly efficient image filtering in a quantum computer age.
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