小波与轮廓波特征在热轧钢板缺陷自动检测中的应用

S. Ghorai, R. Singh, M. Gangadaran
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引用次数: 2

摘要

自动目视检测系统(AVIS)在现代制造业的质量控制,易于文件和降低劳动力成本是显而易见的。由于热轧钢表面缺陷在大表面上的局部化和罕见性,使热轧钢表面缺陷在实际生产过程中的自动检测具有挑战性。本文利用机器学习算法提取了一组能有效解决热轧钢表面缺陷检测问题的特征。目的是分别提取两种分辨率的小波特征和三种分辨率的contourlet特征,然后比较使用这些特征的分类精度性能。本文提出采用支持向量机(SVM)分类器作为检测缺陷表面和法向(无缺陷)表面的机器学习算法。对14种不同类型钢材表面缺陷的实验结果表明,三阶haar小波特征比两阶haar特征集或二阶和三阶contourlet特征集表现更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Wavelet versus contourlet features for automatic defect detection on hot rolled steel sheet
The automatic visual inspection systems (AVIS) are being obvious now-a-days in modern manufacturing industries for quality control, ease of documentation and reduced labor cost. The automatic detection of hot rolled steel surface defects in a real process is challenging due to the localization of it on a large surface and its rare occurrences. In this work an effort has been made to extract a set of features that can effectively address the problem of defect detection on hot rolled steel surface by using machine learning algorithm. It is intended to extract two types of features, namely wavelet and contourlet features with two and three resolution levels separately, and then make a comparison of performance of classification accuracy using these features. Here it is proposed to use state-of-the art support vector machine (SVM) classifier as the machine learning algorithm for detecting the defect surface and normal (defects free) surface. Experimental results on 14 different types of steel surface defects show that `haar' wavelet features with three decomposition levels performs better than two levels `haar' feature set or two and three decomposition levels contourlet feature set.
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