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Data from: Geo-SegNet: A contrastive learning enhanced U-Net for geomaterial segmentation

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DataCite Commons2025-01-26 更新2025-04-10 收录
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https://idn.duke.edu/ark:/87924/r4rf5zz3v
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The dataset was obtained using high-resolution X-ray micro-CT scans with a TESCAN UniTOM XL scanner at Duke University’s Creativ Engineering Laboratory. Samples were secured with a custom core holder featuring a magnetic aluminum base and stabilized using an acrylic tube. Scanning parameters included 160 kV voltage, 20 W power, 4096 projections, 20 µm voxel size, and a 1.5 mm copper filter. The UniTOM XL’s helical scanning captured full core widths, and 9266 representative slices were selected to optimize computation and train models on pore feature segmentation.
提供机构:
Duke Research Data Repository
创建时间:
2024-12-13
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