Abstract

Classification of steel surface defects in steel industry is essential for their detection and also fundamental for the analysis of causes that lead to damages. Timely detection of defects allows to reduce the frequency of their appearance in the final product. This paper considers the classifiers for the recognition of scratches, scrapes and abrasions on metal surfaces. Classifiers are based on the ResNet50 and ResNet152 deep residual neural network architecture. The proposed technique supports the recognition of defects in images and does this with high accuracy. The binary accuracy of the classification based on the test data is 97.14%. The influence of a number of training conditions on the accuracy metrics of the model have been studied. The augmentation conditions have been figured out to make the greatest contribution to improving the accuracy during training. The peculiarities of damages that cause difficulties in their recognition have been studied. The fields of neuron activation have been investigated in the convolutional layers of the model. Feature maps which developed in this case have been found to correspond to the location of the objects of interest. Erroneous cases of the classifier application have been considered. The peculiarities of damages that cause difficulties in their recognition have been studied.

Highlights

  • Rolled metal is one of the main products of ferrous metallurgy

  • We have investigated the appearance of feature maps, which are formed by convolutional layers of the neural network

  • A classifier based onofaaresidual neural network has been developed to recognize in part

Read more

Summary

Introduction

Rolled metal is one of the main products of ferrous metallurgy. It is widely used for the manufacture of metal structures. Since a significant part of the finished products is characterized by surface defects, the production technology needs to be improved [1]. Some defects result from the original workpiece. Some are related to the chemical composition of steels. Some are associated with the shortcomings of the rolling equipment, its adjustment, calibration, wear, etc. Violations of the casting and rolling technology contribute to the impairment of the rolled metal [2,3,4]

Objectives
Methods
Findings
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call