Abstract

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.

Highlights

  • Cold rolled strip is a true all-round material in various products such as automobiles, electrical appliances, ships etc

  • By comparing various combinations of different feature extraction and classification methods, our experiments show that the hybrid method of Local Binary Patterns (LBP) for feature extraction and Extreme Learning Machine (ELM) for defect classification results in less training and identification time with higher classification accuracy, which satisfied online real-time identification

  • To detect and identify various types of surface defects of cold rolled strip, we have developed an online monitoring system

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Summary

Introduction

Cold rolled strip is a true all-round material in various products such as automobiles, electrical appliances, ships etc. In the production of cold rolled strip, various defects appear on the surface of the rolled strip due to various reasons such as issues from manufacturing technology, equipment etc. These defects affect the appearance of the products, and degrade the performance of the products. Feature extraction and classification are the key steps of the machine vision method. The step “local feature extraction” has been widely used in machine vision for image recognition [2], image retrieval [3], image registration [4], image classification [5], image mosaicking [6]

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