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Surface Defects Classification of Hot-Rolled Steel Strips Using Multi-directional Shearlet Features

机译:使用多向剪切特征表面缺损热轧钢带的分类

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摘要

In this paper, a method combining the use of discrete shearlet transform (DST) and the gray-level co-occurrence matrix (GLCM) is presented to classify surface defects of hot-rolled steel strips into the six classes of rolled-in scale, patches, crazing, pitted surface, inclusion and scratches. Feature extraction involves the extraction of multi-directional shearlet features from each input image followed by GLCM calculations from all extracted sub-bands, from which a set of statistical features is extracted. The resultant high-dimensional feature vectors are then reduced using principal component analysis. A supervised support vector machine classifier is finally trained to classify the surface defects. The proposed feature set is compared against the Gabor, wavelets and the original GLCM in order to evaluate and validate its robustness. Experiments were conducted on a database of hot-rolled steel strips consisting of 1800 grayscale images whose defects exhibit high inter-class similarity as well as high intra-class appearance variations. Results indicate that the proposed DST-GLCM method is superior to other methods and achieves classification rates of 96.00%.
机译:在本文中,提出了一种组合使用离散的Shearlet变换(DST)和灰度级共发生矩阵(GLCM)的方法,以将热轧钢带的表面缺陷分类为六种轧制规模,贴片,裂缝,凹陷表面,包含和划痕。特征提取涉及从每个输入图像提取来自每个输入图像的多向剪切特征,然后来自所有提取的子带的GLCM计算,从中提取一组统计特征。然后使用主成分分析减少所得到的高尺寸特征向量。最终培训监督支持向量机分类器以分类表面缺陷。将所提出的特征集与Gabor,小波和原始GLCM进行比较,以便评估和验证其鲁棒性。在由1800个灰度图像组成的热轧钢带数据库上进行了实验,其缺陷表现出高级别的相似性以及高阶内的外观变化。结果表明,所提出的DST-GLCM方法优于其他方法,并实现96.00%的分类率。

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