论文标题
通过基于张量 - 网络的机器学习对量子图像分类器的实验实现
Experimental realization of a quantum image classifier via tensor-network-based machine learning
论文作者
论文摘要
量子机学习愿意克服目前将其适用性限制在实际问题上的棘手性。但是,量子机学习本身受到最新实验中可实现的低有效尺寸的限制。在这里,我们使用光子Qubits展示了现实生活图像的非常成功的分类,结合了手写数字的量子张量 - 网络表示和基于纠缠的优化。具体而言,我们专注于手工编写的零和二进制分类,其特征被投入到张量 - 网络表示中,并通过基于纠缠熵的优化进一步降低,并编码为两个问题的光子状态。然后,我们通过连续的门操作和投影测量值演示高成功率超过98%的图像分类。尽管我们与光子合作,但我们的方法可以与其他物理实现(例如氮相处中心,核自旋和被困离子)进行调整,并且我们的方案可以缩放到有效的张量产物形式特征的多标准编码,从而为量子增强多级分类的阶段设定了阶段。
Quantum machine learning aspires to overcome intractability that currently limits its applicability to practical problems. However, quantum machine learning itself is limited by low effective dimensions achievable in state-of-the-art experiments. Here we demonstrate highly successful classifications of real-life images using photonic qubits, combining a quantum tensor-network representation of hand-written digits and entanglement-based optimization. Specifically, we focus on binary classification for hand-written zeroes and ones, whose features are cast into the tensor-network representation, further reduced by optimization based on entanglement entropy and encoded into two-qubit photonic states. We then demonstrate image classification with a high success rate exceeding 98%, through successive gate operations and projective measurements. Although we work with photons, our approach is amenable to other physical realizations such as nitrogen-vacancy centers, nuclear spins and trapped ions, and our scheme can be scaled to efficient multi-qubit encodings of features in the tensor-product representation, thereby setting the stage for quantum-enhanced multi-class classification.