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Online Surface Defect Identification of Cold Rolled Strips Based on Local Binary Pattern and Extreme Learning Machine

机译:基于局部二值模式和极限学习机的冷轧带钢表面缺陷在线识别

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In the production of cold-rolled strip, the strip surface may suffer from various defects which need to be detected and identified using an online inspection system. The system is equipped with high-speed and high-resolution cameras to acquire images from the moving strip surface. Features are then extracted from the images and are used as inputs of a pre-trained classifier to identify the type of defect. New types of defect often appear in production. At this point the pre-trained classifier needs to be quickly retrained and deployed in seconds to meet the requirement of the online identification of all defects in the environment of a continuous production line. Therefore, the method for extracting the image features and the training for the classification model should be automated and fast enough, normally within seconds. This paper presents our findings in investigating the computational and classification performance of various feature extraction methods and classification models for the strip surface defect identification. The methods include Scale Invariant Feature Transform (SIFT), Speeded Up Robust Features (SURF) and Local Binary Patterns (LBP). The classifiers we have assessed include Back Propagation (BP) neural network, Support Vector Machine (SVM) and Extreme Learning Machine (ELM). By comparing various combinations of different feature extraction and classification methods, our experiments show that the hybrid method of LBP for feature extraction and ELM for defect classification results in less training and identification time with higher classification accuracy, which satisfied online real-time identification.
机译:在冷轧带材的生产中,带材表面可能会出现各种缺陷,需要使用在线检查系统进行检测和识别。该系统配备了高速和高分辨率相机,可从移动的带钢表面获取图像。然后,从图像中提取特征,并将其用作预先训练的分类器的输入,以识别缺陷的类型。新型缺陷通常会在生产中出现。在这一点上,需要对预训练的分类器进行快速重新训练,并在几秒钟内部署,以满足在线识别连续生产线环境中所有缺陷的要求。因此,提取图像特征的方法和分类模型的训练应足够自动化且快速,通常在几秒钟之内。本文介绍了我们在调查带状表面缺陷识别的各种特征提取方法和分类模型的计算和分类性能方面的发现。这些方法包括尺度不变特征变换(SIFT),加速鲁棒特征(SURF)和局部二进制模式(LBP)。我们评估的分类器包括反向传播(BP)神经网络,支持向量机(SVM)和极限学习机(ELM)。通过比较不同特征提取和分类方法的各种组合,我们的实验表明,LBP用于特征提取和ELM进行缺陷分类的混合方法可以减少训练和识别时间,并具有更高的分类精度,可以满足在线实时识别的需要。

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