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基于改进深度卷积神经网络的纸币识别研究

盖杉 鲍中运

盖杉, 鲍中运. 基于改进深度卷积神经网络的纸币识别研究[J]. 电子与信息学报, 2019, 41(8): 1992-2000. doi: 10.11999/JEIT181097
引用本文: 盖杉, 鲍中运. 基于改进深度卷积神经网络的纸币识别研究[J]. 电子与信息学报, 2019, 41(8): 1992-2000. doi: 10.11999/JEIT181097
Shan GAI, Zhongyun BAO. Banknote Recognition Research Based on Improved Deep Convolutional Neural Network[J]. Journal of Electronics & Information Technology, 2019, 41(8): 1992-2000. doi: 10.11999/JEIT181097
Citation: Shan GAI, Zhongyun BAO. Banknote Recognition Research Based on Improved Deep Convolutional Neural Network[J]. Journal of Electronics & Information Technology, 2019, 41(8): 1992-2000. doi: 10.11999/JEIT181097

基于改进深度卷积神经网络的纸币识别研究

doi: 10.11999/JEIT181097
基金项目: 国家自然科学基金(61563037),江西省杰出青年计划(20171BCB23057)
详细信息
    作者简介:

    盖杉:男,1980年生,副教授,硕士生导师,研究方向为计算机视觉、图像处理、深度学习

    鲍中运:男,1990年生,硕士生,研究方向为计算机视觉、图像处理、深度学习

    通讯作者:

    盖杉 gaishan@nchu.edu.cn

  • 中图分类号: TP391.41; TP181

Banknote Recognition Research Based on Improved Deep Convolutional Neural Network

Funds: The National Natural Science Foundation of China(61563037), The Outstanding Youth Scheme of Jiangxi Province (20171BCB23057)
  • 摘要: 针对如何提高纸币识别率的问题,该文提出一种改进深度卷积神经网络(DCNN)的纸币识别算法。该算法首先通过融合迁移学习、带泄露整流(Leaky ReLU)函数、批量归一化(BN)和多层次残差单元构造深度卷积层,对输入的不同尺寸纸币进行稳定而快速的特征提取与学习;然后采用改进的多层次空间金字塔池化算法对提取的纸币特征实现固定大小的输出表示;最后通过网络全连接层和softmax层实现纸币图像分类。实验结果表明,该算法在分类性能、泛化能力与稳定性上明显优于常用的纸币分类算法;同时该算法也能够满足纸币清分系统的实时性要求。
  • 图  1  算法结构示意图

    图  2  纸币图像预处理(RMB-100)

    图  3  纸币图像预处理(USD-100)

    图  4  纸币图像预处理(EUR-500)

    图  5  多层次残差单元结构图

    图  6  多层次空间金字塔池化算法结构框架

    图  7  纸币图像的4个面向

    表  1  纸币数据库

    纸币种类纸币面值纸币分类纸币样本数训练样本数测试样本数
    人民币(RMB)5, 10, 20, 50, 10020460003600010000
    美元(USD)1, 2, 10, 20, 50, 10024380002500013000
    欧元(EUR)5, 10, 20, 50, 100, 200, 5002835000260009000
    下载: 导出CSV

    表  2  数据库DB1平均识别率(%)

    人民币网格特征[3]自由掩模[2]VGGNet19[10]PReLU-net18]BN-inception[16]ResNet-34B[13]本文算法
    10074.2576.4491.5291.4592.3894.1696.68
    5074.0274.7590.8391.7692.1195.9897.80
    2075.2376.8892.3491.5693.6494.8895.03
    1080.1283.3494.0694.7695.6796.8696.97
    583.2480.5793.1693.2795.5395.6697.82
    下载: 导出CSV

    表  3  数据库DB2平均识别率(%)

    美元网格特征[3]自由掩模[2]VGGNet19[10]PReLU-net[18]BN-inception[16]ResNet-34B[13]本文算法
    10070.1372.2489.2691.3393.2594.4695.67
    5073.1472.2891.3591.4992.9894.2994.96
    2074.5677.8290.2392.1493.0595.1195.89
    1076.2175.3491.2593.3493.6794.2895.15
    278.1180.1292.1392.8693.5895.6796.75
    181.2380.0291.2490.3694.2796.1697.98
    下载: 导出CSV

    表  4  数据库DB3平均识别率(%)

    欧元网格特征[3]自由掩模[2]VGGNet19[10]PReLU-net[18]BN-inception[16]ResNet-34B[13]本文算法
    50081.1284.2393.2592.9194.5694.9396.98
    20081.6582.3293.2494.1394.6895.1298.20
    10085.4686.9494.1294.6795.2396.1197.75
    5079.2583.2493.2093.1294.3595, 2996.79
    2083.2484.5294.2595.2895.6496.3398.76
    1085.3387.1294.2494.7694.1997.2097.88
    584.2083.5294.1693.2695.1295.7897.89
    下载: 导出CSV

    表  5  污损纸币实际测试识别率(%)

    污损样本网格特征[3]自由掩模[2]VGGNet19[10]PReLU-net[18]BN-inception[16]ResNet-34B[13]本文算法
    DB1(16100)78.6582.4992.4593.1894.3795.0697.58
    DB2(15960)75.4279.1688.2491.0792.5394.8496.75
    DB3(10500)80.2883.1791.5293.6595.1896.7897.29
    下载: 导出CSV

    表  6  不同识别算法运行时间(s)

    自由掩模[2]网格特征[3]VGGNet19[10]PReLU-Net[18]BN-inception[16]ResNet-34B[13]本文算法
    0.980.851.971.721.581.241.06
    下载: 导出CSV
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出版历程
  • 收稿日期:  2018-11-28
  • 修回日期:  2019-03-27
  • 网络出版日期:  2019-04-21
  • 刊出日期:  2019-08-01

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