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Steel surface defects recognition based on multi-type statistical features and enhanced twin support vector machine.

Authors :
Chu, Maoxiang
Gong, Rongfen
Gao, Song
Zhao, Jie
Source :
Chemometrics & Intelligent Laboratory Systems. Dec2017, Vol. 171, p140-150. 11p.
Publication Year :
2017

Abstract

For steel surface defect recognition, feature extraction and classification are very important steps. In this paper, multi-type statistical features and enhanced twin support vector machine classifier are formulated and applied. Firstly, four types of statistical features for different attributes of defect region are proposed. They are insensitive to affine transformation in scale and rotation. And those attributes include shape distance and local binary pattern operators with sign and magnitude. Then, dummy boundary samples and representative samples are extracted from steel surface defect dataset. Dummy boundary samples include the sparse boundary information of dataset. They can reduce the adverse impact of noise samples. Representative samples with local and global properties are used to replace samples with quadratic loss. They can exclude noise samples. Based on dummy boundary samples and representative samples, enhanced twin support vector machine is formulated. On one hand, it can solve multi-class classification problem. On the other hand, it has anti-noise ability and high classification efficiency. At last, enhanced twin support vector machine classifier and multi-type statistical features are applied to recognize five types of steel surface defects. The experimental results show that our proposed multi-class classifier has perfect performance in efficiency and accuracy. And multi-type statistical features are in favor of improving classification performance. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
01697439
Volume :
171
Database :
Academic Search Index
Journal :
Chemometrics & Intelligent Laboratory Systems
Publication Type :
Academic Journal
Accession number :
126415703
Full Text :
https://doi.org/10.1016/j.chemolab.2017.10.020