Computer Science ›› 2026, Vol. 53 ›› Issue (4): 277-283.doi: 10.11896/jsjkx.250600108

• Computer Graphics & Multimedia • Previous Articles     Next Articles

Image Classification Based on Hybrid Quantum-Classical Long-Short Range Feature Extension Network

ZHENG Yi, JIA Xinghao, ZHANG Junwen, REN Shuang   

  1. School of Computer Science & Technology Engineering, Beijing Jiaotong University, Beijing 100044, China
  • Received:2025-06-17 Revised:2025-09-13 Online:2026-04-15 Published:2026-04-08
  • About author:ZHENG Yi,born in 2000,postgraduate.His main research interests include quantum computing and machine lear-ning.
    REN Shuang,born in 1981,Ph.D,associate professor,Ph.D supervisor.His main research interests include machine learning,quantum computing and 3D computer vision.
  • Supported by:
    National Natural Science Foundation of China(62072025).

Abstract: It is difficult to further break through the scale and computing time of classical neural networks,making it difficult to simultaneously achieve lightweight design and high performance.This has become a bottleneck in solving large-scale image classification problems in the era of big data.In contrast,hybrid quantum-classical neural networks combine the advantages of quantum and classical computing,enabling efficient parallel computation and strong generalizability.To address this,this paper proposes the hybrid quantum-classical long-short range feature extension neural network(HQC-LSNet),a multi-branch architecture composed of multiple hybrid modules.It incorporates a quantum decoupled fully connected attention mechanism built with various quantum rotation gates and controlled-Z gates to efficiently extract long-range features from a quantum-enhanced feature space.Simultaneously,a classical convolutional module is employed to capture short-range features,and feature extension is performed by combining the resulting feature maps.The model achieves classification accuracies of 99.42% on the ten-class MNIST dataset and 91.42% on a three-class CIFAR-10 dataset,outperforming corresponding classical and hybrid quantum-classical models.Additionally,HQC-LSNet reduces both the parameter count and time complexity compared to purely classical models.

Key words: Quantum machine learning, Image classification, Quantum neural network, Quantum computing, Hybrid quantum-classical neural network

CLC Number: 

  • TP183
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