A transfer learning strip steel surface defect recognition network based on VGG19
- Xiang Wan,
- Lilan Liu,
- Sen Wang,
- Shanghai University,
- Shanghai Baosight Software Corporation,
- ,
- ,
- Norwegian University of Science and Technology
Research Output: Chapter in Book/Report/Conference proceeding Conference contribution Peer-review
Abstract
The types of surface defects of strip steel are various and complex gray gradation structure. The existing image detection technology based on machine vision still has the disadvantages of low recognition efficiency and poor generalization performance in strip steel defect detection. However, image detection technology based on deep learning need large numbers of image data to train networks. For a typical multi-class and small sample data with low quality pixels, these data cannot complete a deep neural network training. For this type of data, traditional convolutional neural networks have low recognition rate for small samples and poor generalization for large samples. Combining with deep learning and transfer learning, this paper proposes a transfer learning strip steel defect recognition network based on VGG19. The frozen pre-training network layers in VGG19 are not trained, the learning rates are setting in combination with the actual use of the network layers. The convergence speed and accuracy of the model are taken into account, and the recognition rate and generalization force on small sample data are greatly improved. On the NEU surface dataset 2, the recognition accuracy of our model is 97.5%, which is much higher than the traditional machine learning algorithm. Moreover, the network model in this paper does not require data preprocessing and model parameter adjustment, nor does it need to manually participate in designing the classifier. It is a simple and effective method for identifying the surface defects of strip steel. The method of this paper has a certain practical value in the field of surface recognition of other products.
Publication Information
Output type
Research Output: Chapter in Book/Report/Conference proceeding Conference contribution Peer-review
Original language
EnglishArticle number
Chapter 41Pages from-to (Number of pages)
Pages 333-341Publication milestones
- Published - 03/01/2020
Publication status
Published - 03/01/2020
Publisher
Springer, Japan, India, Australia, Germany, United States, United Arab Emirates, Austria, Switzerland, Italy, China, United Kingdom, Netherlands, Brazil, France, SingaporePublication series
- Publication series name: Advanced Manufacturing and Automation IX
ISSN (Print): 1876-1100
ISSN (Electronic): 1876-1119
Volume: 634
ISBN (Print)
9789811523403ISBN (Electronic)
9789811523410External Publication IDs
- Scopus: 85078400217
