481 lines
13 KiB
BibTeX
481 lines
13 KiB
BibTeX
% BibTeX file generated for article ID: 3416
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% Generated on 2025-12-18 11:45:42
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@article{ref_186051,
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@article{ref_186056,
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@article{ref_186058,
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@article{ref_186064,
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title={Deep Ensemble Learning for the Automatic Detection of Pneumoconiosis in Coal Worker’s Chest X-ray Radiography},
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@article{ref_186067,
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}
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@article{ref_186069,
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author={Office, International Labour},
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@article{ref_186070,
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journal={kaggle},
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year={2022},
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@article{ref_186071,
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@article{ref_186073,
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title={U-Net: Convolutional Networks for Biomedical Image Segmentation},
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