Python-nnUNet是一个专为医学图像分割而设计的框架

上传者: 39840924 | 上传时间: 2021-04-13 15:27:46 | 文件大小: 152KB | 文件类型: ZIP
nnU-Net是一个专为医学图像分割而设计的框架。 给定一个新的数据集(包括训练案例),nnU-Net将自动处理整个实验管道。

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