论文标题
实验性量子生成的对抗网络,用于产生图像
Experimental Quantum Generative Adversarial Networks for Image Generation
论文作者
论文摘要
量子机学习预计将是近期量子设备的第一个实际应用之一。先驱理论工作表明,量子生成的对抗网络(GAN)可能比经典gan具有潜在的指数优势,从而引起广泛的关注。但是,在近期量子设备上实施的量子gan是否可以真正解决现实世界的学习任务仍然难以捉摸。在这里,我们设计了一种灵活的量子gan方案来缩小这一知识差距,该方案可以任意高维特征来完成图像生成,还可以利用量子叠加来并行训练多个示例。我们首次实验地实现了超导量子处理器上实际手写数字图像的学习和生成。此外,我们利用一个灰度的条形数据集,分别根据多层感知器和卷积神经网络体系结构来展示量子甘恩斯和经典甘斯之间的竞争性能,并由Fréchet距离分数标记为基准。我们的工作为在近期量子设备上开发高级量子生成模型提供了指导,并为探索各种与GAN相关的学习任务中的量子优势开辟了途径。
Quantum machine learning is expected to be one of the first practical applications of near-term quantum devices. Pioneer theoretical works suggest that quantum generative adversarial networks (GANs) may exhibit a potential exponential advantage over classical GANs, thus attracting widespread attention. However, it remains elusive whether quantum GANs implemented on near-term quantum devices can actually solve real-world learning tasks. Here, we devise a flexible quantum GAN scheme to narrow this knowledge gap, which could accomplish image generation with arbitrarily high-dimensional features, and could also take advantage of quantum superposition to train multiple examples in parallel. For the first time, we experimentally achieve the learning and generation of real-world hand-written digit images on a superconducting quantum processor. Moreover, we utilize a gray-scale bar dataset to exhibit the competitive performance between quantum GANs and the classical GANs based on multilayer perceptron and convolutional neural network architectures, respectively, benchmarked by the Fréchet Distance score. Our work provides guidance for developing advanced quantum generative models on near-term quantum devices and opens up an avenue for exploring quantum advantages in various GAN-related learning tasks.