DocumentCode :
60271
Title :
Automatic Defect Detection on Hot-Rolled Flat Steel Products
Author :
Ghorai, Santanu ; Mukherjee, Arjun ; Gangadaran, M. ; Dutta, Pranab K.
Author_Institution :
Dept. of Appl. Electron. & Instrum. Eng., Heritage Inst. of Technol., Kolkata, India
Volume :
62
Issue :
3
fYear :
2013
fDate :
Mar-13
Firstpage :
612
Lastpage :
621
Abstract :
Automatic defect detection on hot-rolled steel surface is challenging owing to its localization on a large surface, variation in appearance, and their rare occurrences. It is difficult to detect these defects either by physics-based models or by small-sample statistics using a single threshold. As a result, this problem is focused to derive a set of good-quality defect descriptors from the surface images. These descriptors should discriminate the various surface defects when fed to suitable machine learning algorithms. This research work has evaluated the performance of a number of different wavelet feature sets, namely, Haar, Daubechies 2 (DB2), Daubechies 4 (DB4), biorthogonal spline, and multiwavelet in different decomposition levels derived from 32 × 32 contiguous (nonoverlapping) pixel blocks of steel surface images. We have developed an automated visual inspection system for an integrated steel plant to capture surface images in real time. It localizes defects employing kernel classifiers, such as support vector machine and recently proposed vector-valued regularized kernel function approximation. Test results on 1000 defect-free and 432 defective images comprising of 24 types of defect classes reveal that three-level Haar feature set is more promising to address this problem than the other wavelet feature sets as well as texture-based segmentation or thresholding technique of defect detection.
Keywords :
Haar transforms; approximation theory; hot rolling; image segmentation; inspection; learning (artificial intelligence); metallurgical industries; production engineering computing; statistical analysis; steel; support vector machines; wavelet transforms; DB2; DB4; Daubechies 2; Daubechies 4; Haar feature set; automated visual inspection system; automatic defect detection; biorthogonal spline; decomposition level; hot-rolled flat steel product; hot-rolled steel surface; kernel classifier; machine learning; multiwavelet features; physics-based model; small-sample statistics; support vector machine; surface defect; surface image; texture-based segmentation; thresholding technique; vector-valued regularized kernel function approximation; wavelet feature sets; Feature extraction; Steel; Surface morphology; Surface treatment; Surface waves; Training; Vectors; Automated visual inspection system; defect detection; discrete wavelet transform (DWT); kernel classifier; support vector machine (SVM);
fLanguage :
English
Journal_Title :
Instrumentation and Measurement, IEEE Transactions on
Publisher :
ieee
ISSN :
0018-9456
Type :
jour
DOI :
10.1109/TIM.2012.2218677
Filename :
6336815
Link To Document :
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