JOURNAL ARTICLE

Research on Steel Plate Surface Defects Detection Method Based on Machine Vision

Zhenyu Wang

Year: 2013 Journal:   Computer and Modernization Vol: 1 (7)   Publisher: Computer Science in Jiangxi Province

Abstract

Steel plate surface defects seriously reduce the steel wear resistance,high temperature resistance,corrosion resistance,fatigue resistance and other properties.Therefore,the detection of plate surface defects is very important.This paper proposes a new method to detect steel defects based on machine vision.Collecting images of steel plate surface in various light conditions are discussed.Firstly,the defect images are preprocessed,and then the preprocessed images are changed to binary images and are processed morphologically.Finally,the image background and object graphics are separated,and the surface defect features are extracted to calculate the defect area and perimeter.After the calibration,the defect’s area and length can be obtained.The experimental results show that the method is of reliability and repeatability.

Keywords:
Reliability (semiconductor) Surface (topology) Computer science Machine vision Repeatability Materials science Artificial intelligence Calibration Computer vision Mathematics Geometry

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Topics

Industrial Vision Systems and Defect Detection
Physical Sciences →  Engineering →  Industrial and Manufacturing Engineering
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