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基于多特征融合时差网络的带式输送机区域违规行为识别

马天 姜梅 杨嘉怡 张杰慧 丁旭涵

马天,姜梅,杨嘉怡,等. 基于多特征融合时差网络的带式输送机区域违规行为识别[J]. 工矿自动化,2024,50(7):115-122.  doi: 10.13272/j.issn.1671-251x.2023080108
引用本文: 马天,姜梅,杨嘉怡,等. 基于多特征融合时差网络的带式输送机区域违规行为识别[J]. 工矿自动化,2024,50(7):115-122.  doi: 10.13272/j.issn.1671-251x.2023080108
MA Tian, JIANG Mei, YANG Jiayi, et al. Recognition of violations in belt conveyor area based on multi-feature fusion for time-difference network[J]. Journal of Mine Automation,2024,50(7):115-122.  doi: 10.13272/j.issn.1671-251x.2023080108
Citation: MA Tian, JIANG Mei, YANG Jiayi, et al. Recognition of violations in belt conveyor area based on multi-feature fusion for time-difference network[J]. Journal of Mine Automation,2024,50(7):115-122.  doi: 10.13272/j.issn.1671-251x.2023080108

基于多特征融合时差网络的带式输送机区域违规行为识别

doi: 10.13272/j.issn.1671-251x.2023080108
基金项目: 国家重点研发计划项目(2021YFB4000905);国家自然科学基金项目(62101432,62102309);陕西省自然科学基础研究计划项目(2022JM-508)。
详细信息
    作者简介:

    马天(1982—),男,河南商丘人,副教授,博士,研究方向为图形图像处理、数据可视化,E-mail:matian@xust.edu.cn

    通讯作者:

    姜梅(1997—),女,陕西安康人,硕士研究生,研究方向为图像处理,E-mail: 2451989925@qq.com

  • 中图分类号: TD634

Recognition of violations in belt conveyor area based on multi-feature fusion for time-difference network

  • 摘要: 现有的煤矿井下带式输送机区域违规行为(如攀爬、跨越、倚靠带式输送机等)识别方法对特征提取不充分、难以考虑到行为时间差异,导致违规行为识别准确率不高。针对该问题,基于ResNet50模型,提出了一种基于多特征融合时差网络(MFFTDN)的带式输送机区域违规行为识别方法,将多特征融合和时间差分进行结合,对不同时间段的行为进行多特征融合。首先在原始模型ResNet50的第2和第3阶段引入短期多特征融合(STMFF)模块,将来自多个连续帧的时间和特征拼接在一起,再对融合后的特征进行时间差分计算,即相邻帧的特征差值,以在短期内捕捉局部动作变化。然后在原始模型ResNet50的第4阶段引入长期多特征融合(LTMFF)模块,将来自连续帧的短期多特征拼接在一起,再对相邻时间点的特征进行时间差分计算,以获取行为的长期多特征。最后将融合后的特征进行分类,输出识别结果。实验结果表明:① 该方法的平均精度和准确率较原始模型ResNet50分别提高了8.18%和8.47%,说明同时引入STMFF和LTMFF模块能够有效提取到不同时间段的多特征信息。② 该方法在自建煤矿井下带式输送机区域违规行为数据集上的准确率为89.62%,平均精度为89.30%,模型的参数量为197.2 ×106。③ Grad−CAM热力图显示,该方法能够更有效地关注到违规行为的关键区域,精确捕捉到井下带式输送机区域的违规行为。

     

  • 图  1  MFFTDN结构

    Figure  1.  Structure of multi-feature fusion for time-difference network(MFFTDN)

    图  2  STMFF模块结构

    Figure  2.  Short-term multi-feature fusion(STMFF)module

    图  3  LTMFF模块结构

    Figure  3.  Long-term multi-feature fusion (LTMFF)module structure

    图  4  部分矿工行为原始数据集

    Figure  4.  Original dataset of some miners' behavior

    图  5  不同模型对不同行为的识别结果

    Figure  5.  Recognition results of different models for different behaviors

    表  1  模块消融实验结果

    Table  1.   Module ablation experiment table

    STMFF LTMFF mean_acc/% top1_acc/% params/106
    × × 81.12 81.15 186.0
    × 85.19 85.38 197.5
    × 88.10 88.30 197.8
    89.30 89.62 197.2
    下载: 导出CSV

    表  2  各行为识别方法对比结果

    Table  2.   Comparison results of various behavior recognition methods

    方法 mean_acc/% top1_acc/% params/106
    C3D 89.23 88.74 598.3
    SlowFast 79.58 79.23 266.2
    SlowOnly 88.46 89.33 253.6
    TimesFormer 54.58 55.02 657.3
    TPN 68.08 68.51 703.8
    TSM 73.36 73.95 186.2
    本文方法 89.30 89.62 197.2
    下载: 导出CSV
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出版历程
  • 收稿日期:  2023-08-28
  • 修回日期:  2024-07-22
  • 网络出版日期:  2024-08-01

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