IMAGE PROCESSING WITH DEEP LEARNING: SURFACE DEFECT DETECTION OF METAL GEARS THROUGH DEEP LEARNING

被引:4
作者
Balcioglu, Yavuz Selim [1 ]
Sezen, Bulent [1 ]
Gok, M. Sahin [1 ]
Tunca, Sezai [1 ]
机构
[1] Gebze Tech Univ, Fac Management, TR-41430 Kocaeli, Turkey
关键词
machine learning; deep neural networks; computer vision; quality control; defect detection;
D O I
10.32548/2022.me-04230
中图分类号
TB3 [工程材料学];
学科分类号
0805 ; 080502 ;
摘要
Intelligent production requires improved data analytics and better technological possibilities to improve system performance and decision making. With the widespread use of the machine learning process, a growing need has arisen for processing extensive production data, equipped with high volumes, high speed, and high diversity. At this point, deep learning provides advanced analysis tools for processing and analyzing extensive production data. The deep convolutional neural network (DCNN) displays state-of-the-art performance on many grounds, including metal manufacturing surface defect detection. However, there is still space for improving the defect detection performance over generic DCNN models. The proposed approach performed better than the associated methods in the particular area of surface crack detection. The defect zones of disjointed results are classified into their unique classes by a DCNN. The experimental outcomes prove that this method meets the durability and efficiency requirements for metallic object defect detection. In time, it can also be extended to other detection methods. At the same time, the study will increase the accuracy quality of the features that can make a difference in the deep learning method for the detection of surface defects.
引用
收藏
页码:44 / 53
页数:10
相关论文
共 29 条
  • [21] Rajashekar U, 2005, HANDBOOK OF IMAGE AND VIDEO PROCESSING, 2ND EDITION, P73, DOI 10.1016/B978-012119792-6/50069-3
  • [22] NDT 4.0: Opportunity or Threat?
    Schulenburg, Lennart
    [J]. MATERIALS EVALUATION, 2020, 78 (07) : 852 - 860
  • [23] Sowmya R, 2017, PROCEEDINGS OF 2017 11TH INTERNATIONAL CONFERENCE ON INTELLIGENT SYSTEMS AND CONTROL (ISCO 2017), P246, DOI 10.1109/ISCO.2017.7855990
  • [24] Segmentation-based deep-learning approach for surface-defect detection
    Tabernik, Domen
    Sela, Samo
    Skvarc, Jure
    Skocaj, Danijel
    [J]. JOURNAL OF INTELLIGENT MANUFACTURING, 2020, 31 (03) : 759 - 776
  • [25] A Review on Process Monitoring and Control in Metal-Based Additive Manufacturing
    Tapia, Gustavo
    Elwany, Alaa
    [J]. JOURNAL OF MANUFACTURING SCIENCE AND ENGINEERING-TRANSACTIONS OF THE ASME, 2014, 136 (06):
  • [26] Vyas A, 2018, SIGNALS COMMUN TECHN, P3, DOI 10.1007/978-981-10-7272-7_1
  • [27] Design of deep convolutional neural network architectures for automated feature extraction in industrial inspection
    Weimer, Daniel
    Scholz-Reiter, Bernd
    Shpitalni, Moshe
    [J]. CIRP ANNALS-MANUFACTURING TECHNOLOGY, 2016, 65 (01) : 417 - 420
  • [28] An Improved ARIMA-Based Traffic Anomaly Detection Algorithm for Wireless Sensor Networks
    Yu, Qin
    Jibin, Lyu
    Jiang, Lirui
    [J]. INTERNATIONAL JOURNAL OF DISTRIBUTED SENSOR NETWORKS, 2016,
  • [29] Learning Deep Features for Discriminative Localization
    Zhou, Bolei
    Khosla, Aditya
    Lapedriza, Agata
    Oliva, Aude
    Torralba, Antonio
    [J]. 2016 IEEE CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION (CVPR), 2016, : 2921 - 2929