计算机科学 ›› 2024, Vol. 51 ›› Issue (6A): 230800115-6.doi: 10.11896/jsjkx.230800115

• 图像处理&多媒体技术 • 上一篇    下一篇

融合注意力机制与线激光辅助的输送带缺陷检测网络

宋震, 王纪强, 侯墨语, 赵林   

  1. 齐鲁工业大学(山东省科学院),山东省科学院激光研究所 济南 250104
  • 发布日期:2024-06-06
  • 通讯作者: 赵林(linzhao1225@126.com)
  • 作者简介:(sz_bigdreamer@163.com)
  • 基金资助:
    国家重点研发计划(2022YFB3207602);山东省自然科学基金重点项目(ZR2020KC012)

Conveyor Belt Defect Detection Network Combining Attention Mechanism with Line Laser Assistance

SONG Zhen, WANG Jiqiang, HOU Moyu, ZHAO Lin   

  1. Laser Institute,Qilu University of Technology(Shandong Academy of Sciences),Jinan 250104,China
  • Published:2024-06-06
  • About author:SONG Zhen,born in 1999,postgra-duate.His main research interests include defect detection and target recognition.
    ZHAO Lin,born in 1981,associate research fellow,master’s supervisor.His main research interests include optical fiber sensor and laser detection techno-logy.
  • Supported by:
    National Key Research and Development Program of China(2022YFB3207602) and Key Project of Shandong Provincial Natural Science Foundation(ZR2020KC012).

摘要: 针对输送带缺陷种类繁多、缺陷特征像素占比小以及传统算法检测精度低的问题,采用随机仿射变换,扩充样本数据集;分析各通道间的关联关系及其贡献值对模型特征提取的影响,提出了一种通道关联加权注意力机制,利用关联卷积及全连接方式计算通道关联度及贡献权值,调整相应通道信息占比,提升模型检测精度;分析了上采样以及卷积块对输出特征图大小的影响,改进原特征金字塔特征卷积块及上采样结构,提高算法对小目标的特征提取以及缺陷检测能力;最后在输送带缺陷数据集上进行测试。结果表明:改进算法模型能对输送带典型的异物插入、破损、撕裂等缺陷特征进行有效识别,识别精准度可达99.7%,召回率大于99.5%,平均精度均值达到99.5%。

关键词: 皮带缺陷检测, 深度学习, 通道关联加权处理, 小目标检测层

Abstract: Aiming to the problems of a wide variety of conveyor belt defects,a small proportion of defect feature pixels,and the low detection accuracy of traditional algorithms,random affine transformation is used to expand the sample dataset.The influence of the correlation between each channel and its contribution value on the model feature extraction is analyzed,and a channel correlation weighted attention mechanism is proposed.The correlation degree and contribution weight of each channel are calculated by correlation convolution and full connection,and the proportion of corresponding channel information is adjusted to improve the detection accuracy of the model.The influence of upsampling and convolution block on the size of the output feature map is analyzed.The original feature pyramid feature convolution block and upsampling structure are improved to enhance the feature extraction and defect detection ability of the algorithm for small targets.Finally,the test is conducted on the conveyor belt defect data set.The results show that the improved algorithm model can effectively identify the typical defect features such as foreign body insertion,breakage,and tearing of the conveyor belt.The recognition precision can reach 99.7%,the recall rate is increased to 99.5%,and the mean average precision is 99.5%.

Key words: Belt defect detection, Deep learning, Channel association weighting, Small target detection layer

中图分类号: 

  • TP399
[1]CHE J,QIAO T,YANG Y,et al.Longitudinal tear detectionmethod of conveyor belt based on audio-visual fusion[J].Mea-surement,2021,176(1):109152.
[2]WANG Y,MIAO C,LIU Y,et al.Research on a sound-based method for belt conveyor longitudinal tear detection[J].Mea-surement,2022,190(1):110787.
[3]TOM K,LI J.Heat load estimation of conveyed ore in underground mines[J].CIM Journal,2020,11(2):155-163.
[4]MIAO D,WANG Y,YANG L,et al.Foreign Object Detection Method of Conveyor Belt Based on Improved Nanodet[J].IEEE Access,2023,11:23046-23052.
[5]HAO X,MENG X,ZHANG Y,et al.Conveyor-Belt Detection ofConditional Deep Convolutional Generative Adversarial Network[J].CMC-Computer Materials & Continua,2021(11):2671-2685.
[6]ZHANG M,SHI H,ZHANG Y,et al.Deep learning-baseddamage detection of mining conveyor belt[J].Measurement,2021,175(99):109130.
[7]QU D,QIAO T,PANG Y,et al.Research On ADCN Method For Damage Detection Of Mining Conveyor Belt[J].IEEE Sensors Journal,2020,21(6):8662-8669.
[8]LI W,LI C,YAN F.Research on belt tear detection algorithm based on multiple sets of laser line assistance[J].Measurement,2021,174(2):109047.
[9]LV Z,ZHANG X,HU J,et al.Visual detection method based on line lasers for the detection of longitudinal tears in conveyor belts[J].Measurement,2021,183(6):109800.
[10]PATENTINHABER G.Method and display device for displaying a wear dimension of an endless roller link conveyor belt or chain link conveyor belt:DE,DE102020114979B4[P].[2022-04-07].
[11]ZHAO C.On-line Monitoring System for Longitudinal Tear of Conveyor Belt based on Lab-VIEW[C]//International Confe-rence on Advances in Electrical Engineering and Computer Applications.2022.
[12]HU X,ZONG M.Fault Prediction Method of Belt ConveyorBased on Grey Least Square Support Vector Machine[C]//International Conference on Measuring Technology and Mechatronics Automation,2021.
[13]MIAO D,WANG Y,LI S.Sound-Based Improved DenseNetConveyor Belt Longitudinal Tear Detection[J].IEEE Access,2022:123801-123808.
[14]HE K,GKIOXARI G,DOLLAR P,et al.Mask R-CNN[C]//IEEE International Conference on Computer Uision(ICCV),2017.
[15]SUN X H,GU J N,HUANG R.A modified SSD method forElectronic Components Fast Recognition.[J].Optik,2020,205:163767.
[16]LI Y,LU Y J,CHEN J.A deep learning approach for real-time rebar counting on the construction site based on YOLOv3 detector.[J].Automation in Construction,2021,124:103602.
[17]GUO F,QIAN Y,SHI Y F.Real-time railroad track components inspection based on the improved YOLOv4 framework.[J].Automation in Construction,2021,125(3):103596.
[18]LI C L,XIE G,WANG Y,et al.Defect detection of polaroidbased on YOLOv3-Tiny-D algorithm[J].Computer Integrated Manufacturing Systems,2022,28(3):787-797.
[19]SHENG P F,HAO X L,LYU J L.Conveyor belt tear detection with improved regional convolution neural network[J].Compu-ter Engineering And Design,2023,44(3):908-915
[20]HAO S,ZHANG X,MA X,et al.Foreign object detection in coal mine conveyor belt based on CBAM-YOLOv5[J].Journal of China Coal Society,2022,47(11):4147-4156.
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