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Automatic Defect Detection on Hot-Rolled Flat Steel Products

机译:热轧扁钢产品的自动缺陷检测

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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.
机译:由于热轧钢表面上的局部缺陷,外观变化以及罕见情况,因此自动检测热轧钢表面的缺陷具有挑战性。通过基于物理的模型或通过使用单个阈值的小样本统计数据很难检测到这些缺陷。结果,该问题集中于从表面图像导出一组高质量的缺陷描述符。当提供给合适的机器学习算法时,这些描述符应该区分各种表面缺陷。这项研究工作评估了来自32×32连续(不重叠)的不同分解级别下Haar,Daubechies 2(DB2),Daubechies 4(DB4),双正交样条和多小波在不同分解级别上的性能。钢表面图像的像素块。我们已经为一家集成钢厂开发了一种自动视觉检测系统,可以实时捕获表面图像。它使用支持向量机和最近提出的向量值正则化核函数逼近等核分类器来定位缺陷。对1000种无缺陷和432种包含24种缺陷类别的缺陷图像的测试结果表明,与其他小波特征集以及基于纹理的分割或阈值化技术相比,三级Haar特征集更有望解决该问题。缺陷检测。

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