TY - JOUR
T1 - Bridging micro-to-nano scales for metal ore characterization via one-shot super-resolution
AU - Tang, Kunning
AU - Wang, Ying Da
AU - Mostaghimi, Peyman
AU - Niu, Yufu
AU - Armstrong, Ryan T.
AU - Zhang, Yulai
AU - Deakin, Lachlan
AU - Knuefing, Lydia
AU - Knackstedt, Mark
N1 - Publisher Copyright:
© 2025
PY - 2025/6
Y1 - 2025/6
N2 - The mineral composition, micro/nanostructure, and distribution of ore materials are commonly visualized, analyzed, and characterized using 2-dimensional (2D) scanning electron microscopy (SEM) and 3D X-ray micro-computed tomography (micro-CT). While SEM offers sufficient resolution for nano-scale feature characterization, it is limited to 2D structural and property insights. Micro-CT allows for 3D structural analysis, but its resolution is inadequate for capturing fine features. Additionally, tomography involves a trade-off between resolution and field of view (FOV). Practical scales often involve ore samples ranging from 10 mm to 80 mm in diameter, but acquiring fine-scale information (<1 μm) typically reduces the sample diameter to 2 mm. To address these gaps, a super-resolution technique is proposed that integrates micro-CT at practical scales with fine-scale data. The method uses a segmentation-guided one-shot super-resolution network to bridge 2D SEM (0.5μm) and 3D micro-CT (6.9μm) for four Fe-rich ore particles with varying mineralogy, texture, and porosity. Testing on unseen micro-CT sections shows an error of <10% compared to SEM data. An algorithm is proposed to transform the 3D super-resolved images into coarsened partial volume maps that contain SEM scale information but retain the micro-CT length scale. Porosity calculated from the coarsened maps agrees with experimental measurements, differing by less than 1%. This proposed workflow effectively infers nanoscale information at the micro-CT scale, substantially enhancing ore characterization.
AB - The mineral composition, micro/nanostructure, and distribution of ore materials are commonly visualized, analyzed, and characterized using 2-dimensional (2D) scanning electron microscopy (SEM) and 3D X-ray micro-computed tomography (micro-CT). While SEM offers sufficient resolution for nano-scale feature characterization, it is limited to 2D structural and property insights. Micro-CT allows for 3D structural analysis, but its resolution is inadequate for capturing fine features. Additionally, tomography involves a trade-off between resolution and field of view (FOV). Practical scales often involve ore samples ranging from 10 mm to 80 mm in diameter, but acquiring fine-scale information (<1 μm) typically reduces the sample diameter to 2 mm. To address these gaps, a super-resolution technique is proposed that integrates micro-CT at practical scales with fine-scale data. The method uses a segmentation-guided one-shot super-resolution network to bridge 2D SEM (0.5μm) and 3D micro-CT (6.9μm) for four Fe-rich ore particles with varying mineralogy, texture, and porosity. Testing on unseen micro-CT sections shows an error of <10% compared to SEM data. An algorithm is proposed to transform the 3D super-resolved images into coarsened partial volume maps that contain SEM scale information but retain the micro-CT length scale. Porosity calculated from the coarsened maps agrees with experimental measurements, differing by less than 1%. This proposed workflow effectively infers nanoscale information at the micro-CT scale, substantially enhancing ore characterization.
KW - Coarsened partial volume map
KW - Metal Ore characterization
KW - Micro-to-nano scale characterization
KW - SEM imaging
KW - Super-resolution
KW - X-ray micro-computed tomography
UR - http://www.scopus.com/inward/record.url?scp=85219500898&partnerID=8YFLogxK
U2 - 10.1016/j.mineng.2025.109219
DO - 10.1016/j.mineng.2025.109219
M3 - Article
AN - SCOPUS:85219500898
SN - 0892-6875
VL - 225
JO - Minerals Engineering
JF - Minerals Engineering
M1 - 109219
ER -