视网膜血管图像分割,视网膜血管图像分割算法,Python

上传者: 42696333 | 上传时间: 2022-11-05 20:44:27 | 文件大小: 58KB | 文件类型: RAR
基于CNN的视网膜血管图像分割,模型采用U-net架构搭建而成,使用keras作为框架,使用Tensorflow作为后端。使用python作为接口语言。

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