2023
DOI: 10.4028/p-2sqo8w
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Machine Learning Approaches for Classification of Ultra High Carbon Steel Micrographs

Jorge Muñoz-Ródenas,
Valentín Miguel,
Francisco García-Sevilla
et al.

Abstract: The aim of this investigation is to analyze the performance of several supervised machine learning algorithms for solving the automatic classification problem of steel image microstructures. We conducted an experiment using a public-domain dataset of Ultra High Carbon Steel Micrographs (UHCSM). This image database consists of a collection of scanning electron micrographs (SEM) taken from samples of a commercial roll-mill casting with a nominal carbon of 2%. Heat treatments such as annealing, water quenching, a… Show more

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