Hybrid Quantum–Classical Generative Adversarial Network for High-Resolution Image Generation

Shu Lok Tsang;Maxwell T. West;Sarah M. Erfani;Muhammad Usman
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引用次数: 5

Abstract

Quantum machine learning (QML) has received increasing attention due to its potential to outperform classical machine learning methods in problems, such as classification and identification tasks. A subclass of QML methods is quantum generative adversarial networks (QGANs), which have been studied as a quantum counterpart of classical GANs widely used in image manipulation and generation tasks. The existing work on QGANs is still limited to small-scale proof-of-concept examples based on images with significant downscaling. Here, we integrate classical and quantum techniques to propose a new hybrid quantum–classical GAN framework. We demonstrate its superior learning capabilities over existing quantum techniques by generating $28 \times 28$ pixels grayscale images without dimensionality reduction or classical pre/postprocessing on multiple classes of the standard Modified National Institute of Standards and Technology (MNIST) and Fashion MNIST datasets, which achieves comparable results to classical frameworks with three orders of magnitude less trainable generator parameters. To gain further insight into the working of our hybrid approach, we systematically explore the impact of its parameter space by varying the number of qubits, the size of image patches, the number of layers in the generator, the shape of the patches, and the choice of prior distribution. Our results show that increasing the quantum generator size generally improves the learning capability of the network. The developed framework provides a foundation for future design of QGANs with optimal parameter set tailored for complex image generation tasks.
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高分辨率图像生成的混合量子经典生成对抗网络
量子机器学习(QML)因其在分类和识别任务等问题上优于经典机器学习方法的潜力而受到越来越多的关注。QML方法的一个子类是量子生成对抗网络(qgan),它被研究为广泛用于图像处理和生成任务的经典gan的量子对偶。qgan的现有工作仍然局限于基于图像的小规模概念验证示例。在这里,我们将经典技术和量子技术相结合,提出了一个新的混合量子-经典GAN框架。我们通过在多个类别的标准修改国家标准与技术研究所(MNIST)和时尚MNIST数据集上生成$28 \ × 28$像素的灰度图像,而无需降维或经典的预处理/后处理,证明了其优于现有量子技术的学习能力,该数据集与具有三个数量级低的可训练生成器参数的经典框架实现了可比的结果。为了进一步深入了解我们的混合方法的工作原理,我们通过改变量子比特的数量、图像补丁的大小、生成器中的层数、补丁的形状和先验分布的选择,系统地探索了其参数空间的影响。我们的研究结果表明,增加量子生成器的大小通常会提高网络的学习能力。所开发的框架为未来设计具有适合复杂图像生成任务的最优参数集的qgan提供了基础。
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