Á. V. Juanco Müller, J. F. C. Mota, C. Hoogendoorn
Segmentation of Skin Lesions by Superpixel Classification with Graph-Context CNN MIUA 2021 |
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Duración y precisión del flujo de trabajo automatizado de TC de accidente cerebrovascular con detección de oclusión de grandes vasos intracraneales respaldada por IA | Informes científicos (2023) | Descargar PDF |
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Johnson, J. (2023). Reducción inteligente de ruido: ver a través del ruido con procesamiento de imágenes de aprendizaje profundo [White paper]. Canon Inc., Medical Component Business Unit. | Descargar PDF |
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© CANON MEDICAL SYSTEMS ARGENTINA S.A.