Comparison between image based and tabular data-based inclusion class categorization

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Comparison between image based and tabular data-based inclusion class categorization. / Ramesh Babu, Shashank; Musi, Robert; Michelic, Susanne Katharina.
Practical Metallography: Praktische Metallographie – Preparation, Imaging and Analysis of Microstructures. Band 60 10. Aufl. de Gruyter, 2023.

Publikationen: Beitrag in Buch/Bericht/KonferenzbandBeitrag in Konferenzband

Harvard

Ramesh Babu, S, Musi, R & Michelic, SK 2023, Comparison between image based and tabular data-based inclusion class categorization. in Practical Metallography: Praktische Metallographie – Preparation, Imaging and Analysis of Microstructures. 10 Aufl., Bd. 60, de Gruyter. https://doi.org/10.1515/pm-2023-0056

APA

Ramesh Babu, S., Musi, R., & Michelic, S. K. (2023). Comparison between image based and tabular data-based inclusion class categorization. In Practical Metallography: Praktische Metallographie – Preparation, Imaging and Analysis of Microstructures (10 Aufl., Band 60). de Gruyter. https://doi.org/10.1515/pm-2023-0056

Vancouver

Ramesh Babu S, Musi R, Michelic SK. Comparison between image based and tabular data-based inclusion class categorization. in Practical Metallography: Praktische Metallographie – Preparation, Imaging and Analysis of Microstructures. 10 Aufl. Band 60. de Gruyter. 2023 doi: https://doi.org/10.1515/pm-2023-0056

Author

Ramesh Babu, Shashank ; Musi, Robert ; Michelic, Susanne Katharina. / Comparison between image based and tabular data-based inclusion class categorization. Practical Metallography: Praktische Metallographie – Preparation, Imaging and Analysis of Microstructures. Band 60 10. Aufl. de Gruyter, 2023.

Bibtex - Download

@inproceedings{d0dd74a1f3644cbb911f6b07b2f7c1d7,
title = "Comparison between image based and tabular data-based inclusion class categorization",
abstract = "Non-metallic inclusions (NMI) have a significant impact on the final properties of steel products. As of today, the scanning electron microscope equipped with energy-dispersive spectroscopy (SEM-EDS) serves as the state of art characterization tool to study NMIs in steel. The automated 2D analysis method with the SEM-EDS allows for a comprehensive analysis of all the inclusions observed within a selected area of the sample. The drawback of this method is the time taken to complete the analysis. Therefore, machine learning methods have been introduced which can potentially replace the usage of EDS for obtaining chemical information of the inclusion by making quick categorizations of the inclusion classes and types. The machine learning methods can be developed by either training it directly with labeled backscattered electron (BSE) images or by tabular data consisting of image features input such as morphology and mean gray value obtained from the BSE images. The current paper compares both these methods using two steel grades. The advantages and the disadvantages have been documented. The paper will also compare the usage of shallow and deep learning methods to classify the steels and discuss the outlook of the existing machine learning methods to efficiently categorize the NMIs in steel.",
keywords = "steel, non metallic inclusions, Electron microscopy, Machine learning",
author = "{Ramesh Babu}, Shashank and Robert Musi and Michelic, {Susanne Katharina}",
year = "2023",
month = sep,
day = "14",
doi = "https://doi.org/10.1515/pm-2023-0056",
language = "English",
volume = "60",
booktitle = "Practical Metallography",
publisher = "de Gruyter",
address = "Germany",
edition = "10",

}

RIS (suitable for import to EndNote) - Download

TY - GEN

T1 - Comparison between image based and tabular data-based inclusion class categorization

AU - Ramesh Babu, Shashank

AU - Musi, Robert

AU - Michelic, Susanne Katharina

PY - 2023/9/14

Y1 - 2023/9/14

N2 - Non-metallic inclusions (NMI) have a significant impact on the final properties of steel products. As of today, the scanning electron microscope equipped with energy-dispersive spectroscopy (SEM-EDS) serves as the state of art characterization tool to study NMIs in steel. The automated 2D analysis method with the SEM-EDS allows for a comprehensive analysis of all the inclusions observed within a selected area of the sample. The drawback of this method is the time taken to complete the analysis. Therefore, machine learning methods have been introduced which can potentially replace the usage of EDS for obtaining chemical information of the inclusion by making quick categorizations of the inclusion classes and types. The machine learning methods can be developed by either training it directly with labeled backscattered electron (BSE) images or by tabular data consisting of image features input such as morphology and mean gray value obtained from the BSE images. The current paper compares both these methods using two steel grades. The advantages and the disadvantages have been documented. The paper will also compare the usage of shallow and deep learning methods to classify the steels and discuss the outlook of the existing machine learning methods to efficiently categorize the NMIs in steel.

AB - Non-metallic inclusions (NMI) have a significant impact on the final properties of steel products. As of today, the scanning electron microscope equipped with energy-dispersive spectroscopy (SEM-EDS) serves as the state of art characterization tool to study NMIs in steel. The automated 2D analysis method with the SEM-EDS allows for a comprehensive analysis of all the inclusions observed within a selected area of the sample. The drawback of this method is the time taken to complete the analysis. Therefore, machine learning methods have been introduced which can potentially replace the usage of EDS for obtaining chemical information of the inclusion by making quick categorizations of the inclusion classes and types. The machine learning methods can be developed by either training it directly with labeled backscattered electron (BSE) images or by tabular data consisting of image features input such as morphology and mean gray value obtained from the BSE images. The current paper compares both these methods using two steel grades. The advantages and the disadvantages have been documented. The paper will also compare the usage of shallow and deep learning methods to classify the steels and discuss the outlook of the existing machine learning methods to efficiently categorize the NMIs in steel.

KW - steel

KW - non metallic inclusions

KW - Electron microscopy

KW - Machine learning

U2 - https://doi.org/10.1515/pm-2023-0056

DO - https://doi.org/10.1515/pm-2023-0056

M3 - Conference contribution

VL - 60

BT - Practical Metallography

PB - de Gruyter

ER -