卷积神经网络
量子相位估计算法
量子算法
量子电路
计算机科学
量子机器学习
算法
MNIST数据库
量子计算机
量子
量子态
人工智能
量子纠错
深度学习
物理
量子力学
作者
Wei Li,Peng-Cheng Chu,Guang-Zhe Liu,Yu‐Ping Tian,Tian-Hui Qiu,Shumei Wang
摘要
Quantum machine learning is emerging as a strategy to solve real-world problems. As a quantum computing model, parameterized quantum circuits provide an approach for constructing quantum machine learning algorithms, which may either realize computational acceleration or achieve better algorithm performance than classical algorithms. Based on the parameterized quantum circuit, we propose a hybrid quantum-classical convolutional neural network (HQCCNN) model for image classification that comprises both quantum and classical components. The quantum convolutional layer is designed using a parameterized quantum circuit. It is used to perform linear unitary transformation on the quantum state to extract hidden information. In addition, the quantum pooling unit is used to perform pooling operations. After the evolution of the quantum system, we measure the quantum state and input the measurement results into a classical fully connected layer for further processing. We demonstrate its potential by applying HQCCNN to the MNIST dataset. Compared to a convolutional neural network in a similar architecture, the results reveal that HQCCNN has a faster training speed and higher testing set accuracy than a convolutional neural network.
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