A tutorial on the segmentation of metallographic images: Taxonomy, new MetalDAM dataset, deep learning-based ensemble model, experimental analysis and challenges
Metadatos
Afficher la notice complèteAuteur
Luengo Martín, Julián; Sevillano García, Iván; Charte Luque, Francisco David; Peláez Vegas, Adrián; Mesejo Santiago, Pablo; Herrera Triguero, FranciscoEditorial
Elsevier
Materia
Image segmentation Metallography Machine learning Deep learning Microscopy images Computer vision
Date
2021-09-30Referencia bibliográfica
Julián Luengo... [et al.]. A tutorial on the segmentation of metallographic images: Taxonomy, new MetalDAM dataset, deep learning-based ensemble model, experimental analysis and challenges, Information Fusion, Volume 78, 2022, Pages 232-253, ISSN 1566-2535, [https://doi.org/10.1016/j.inffus.2021.09.018]
Patrocinador
ArcelorMittal, Luxembourg Global RD; ArcelorMittal Global R&D Digital Portfolio in collaboration with the Andalusian Research Institute in Data Science and Computational Intelligence (DaSCI), University of Granada; Andalusian Excellence, Spain project P18-FR-4961 SOMM17/6110/UGR; Spanish Ministry of Universities, Spain under the FPU program FPU17/04069; Universidad de Granada/CBUARésumé
Image segmentation is an important issue in many industrial processes, with high potential to enhance
the manufacturing process derived from raw material imaging. For example, metal phases contained in
microstructures yield information on the physical properties of the steel. Existing prior literature has been
devoted to develop specific computer vision techniques able to tackle a single problem involving a particular
type of metallographic image. However, the field lacks a comprehensive tutorial on the different types of
techniques, methodologies, their generalizations and the algorithms that can be applied in each scenario. This
paper aims to fill this gap. First, the typologies of computer vision techniques to perform the segmentation
of metallographic images are reviewed and categorized in a taxonomy. Second, the potential utilization of
pixel similarity is discussed by introducing novel deep learning-based ensemble techniques that exploit this
information. Third, a thorough comparison of the reviewed techniques is carried out in two openly available
real-world datasets, one of them being a newly published dataset directly provided by ArcelorMittal, which
opens up the discussion on the strengths and weaknesses of each technique and the appropriate application
framework for each one. Finally, the open challenges in the topic are discussed, aiming to provide guidance
in future research to cover the existing gaps.