International Journal of Data Science and Big Data Analytics
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Volume 2, Issue 1, May 2022 | |
Research PaperOpenAccess | |
Computer Vision-Based Defect Detection and Severity Classification for Cast Slabs from Sulphur Print Images |
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Arup Mallick1*, Pabitra Palai2, Ajay Kumar3, Mrityunjay Kr Singh4, Biswajit Ghosh5 and Vinay V Mahashabde6 |
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1Senior Technologist, Tata Steel Ltd, Jamshedpur 831001, India. E-mail: arup.mallick@tatasteel.com
*Corresponding Author | |
Int.J.Data.Sci. & Big Data Anal. 2(1) (2022) 26-34, DOI: https://doi.org/10.51483/IJDSBDA.2.1.2022.26-34 | |
Received: 03/02/2022|Accepted: 17/04/2022|Published: 05/05/2022 |
Worldwide steel industries are rapidly adopting advance data science, AI, ML kind of technologies for increasing interconnectivity and smart automation of their daily processes. As oil and gas companies are seeking higher quality material from steel manufacturer, dependency of above technologies is growing very fast. Currently, defect detection using computer vision is emerging an important technology which is impressing all the technologist and convincing people to accept it. In conventional steel slab caster, various types of internal defects are generated with low to high severity where Centerline Segregation (CLS) and Internal Crack (IC) evolves most significant type of defects, which are likely undesirable. Since, those defects cannot be avoided due to solidification of liquid steel, dynamic soft reduction technology is universally used for minimizing it. Mannesmann standard images is widely used in steel slab caster area for classifying the slab defects severity by comparing the defects printed in sulphur printing paper with the standard images by visual observation to assure material quality. However, this conventional method is highly error prone due to variation in results for varying judgement by operator to operator. Therefore, a suitable scientific method was required to develop for improving reliability of test result. In this study, a quantitative model for classification of CLS and IC defect severity using advance image analytics technique has been developed and described.
Keywords: Image processing, Centerline Segregation, Internal crack, Classification
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