Bladder Cancer Segmentation on Multispectral Images
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- Bladder Cancer Segmentation on Multispectral Images
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- General Chairs:
- Lukas Esterle,
- Andrea Prati,
- Program Chairs:
- Senem Velipasalar,
- Victor Brea,
- Caifeng Shan
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Association for Computing Machinery
New York, NY, United States
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