4.6 Article

Automated steel surface defect detection and classification using a new deep learning-based approach

Journal

NEURAL COMPUTING & APPLICATIONS
Volume 35, Issue 11, Pages 8389-8406

Publisher

SPRINGER LONDON LTD
DOI: 10.1007/s00521-022-08112-5

Keywords

Steel surface defect; Classification; PAR-CNN model; NRMI feature selection

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A new deep learning-based approach has been developed in this study to detect and classify surface defects in the steel production process. The proposed methodology involves designing a deep learning model, extracting deep features, selecting features using a new algorithm, and classification using the support vector machine algorithm.
In this study, a new deep learning-based approach has been developed that detects and classifies surface defects that occur in the steel production process. The proposed methodology was created in four steps. In the first step, a deep learning model is designed that trains the residual and attention structures in parallel, thus increasing the classification performance. In the second step, deep features were extracted from the Parallel Attention Residual-Convolutional Neural Network model. The extracted features in the third step were selected by a new and simple algorithm (NCA-ReliefF Matched Index) based on matching the indexes obtained from the Neighborhood Component Analysis and Relief algorithms. In the last process, classification was done with the support vector machine algorithm. The proposed methodology was used for dual and multi-class classification tasks and evaluated on a dataset in the Kaggle database named Severstal: Steel Defect Detection.

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