2021
DOI: 10.3390/met11030388
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Automatic Detection and Classification of Steel Surface Defect Using Deep Convolutional Neural Networks

Abstract: Automatic detection of steel surface defects is very important for product quality control in the steel industry. However, the traditional method cannot be well applied in the production line, because of its low accuracy and slow running speed. The current, popular algorithm (based on deep learning) also has the problem of low accuracy, and there is still a lot of room for improvement. This paper proposes a method combining improved ResNet50 and enhanced faster region convolutional neural networks (faster R-CN… Show more

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Cited by 108 publications
(45 citation statements)
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“…We have investigated the appearance of feature maps, which are formed by convolutional layers of the neural network. The picture of the intermediate neuron activation shows how successfully the convolutional neural network converts the input signal and detects informative features [32,33]. The activation map makes it possible to see how the input image is decomposed by various filters generated during the neural network training.…”
Section: Grad-cam Class Activation Mapsmentioning
confidence: 99%
“…We have investigated the appearance of feature maps, which are formed by convolutional layers of the neural network. The picture of the intermediate neuron activation shows how successfully the convolutional neural network converts the input signal and detects informative features [32,33]. The activation map makes it possible to see how the input image is decomposed by various filters generated during the neural network training.…”
Section: Grad-cam Class Activation Mapsmentioning
confidence: 99%
“…They compared the calculation results with the models developed by the logistic regression method and the SVM method. The results of modelling, aimed at detecting defects in the surface of products using deep neural networks, can be found, among others, in References [82][83][84][85][86][87].…”
Section: Deep Neural Networkmentioning
confidence: 99%
“…For example, in [13] authors show how a hybrid strategy, which combines decision trees and ANNs, can be used for accurate and reliable prediction of ore crushing plate lifetimes. In [14], region convolutional neural networks are used for automatic detection of steel surface defects in product quality control. In [15], authors show the application of neural networks to a cyclic elastoplastic material as well as to a more complex thermo-viscoplastic steel solidification model.…”
Section: Introductionmentioning
confidence: 99%