MedicalVision:基于pytorch的深度学习工具包,用于医学图像分析

上传者: 42123237 | 上传时间: 2022-10-05 11:10:57 | 文件大小: 36KB | 文件类型: ZIP
什么是MedicalVision? 基于pytorch的深度学习工具包,用于医学图像分析。 MedicalVision的目标是在火炬上提供轻巧的包装,可以进一步减少开发用于医学图像分析任务(例如分类,配准和分割等)的新算法的时间。 动机与目标 随着深度学习在计算机视觉中的流行,已经提出了许多基于深度学习的作品/体系结构来处理传统医学图像分析任务(分类,注册和分割)。 不幸的是,据我所知,还没有一个基于pytorch的简单有效的工具包能够实现快速原型制作。 在日常工作中,我会为各种医学图像数据集编写DataLoader并重现一些论文中介绍的算法。 为了使生活更轻松,创建了MedicalVision工具包,旨在提供: 著名医学图像数据集的数据加载器 最新模型中使用的常见损失和指标 动物园模型,包括经过培训的最新模型 ... MedicalVision工具箱仍在开发中。 以下流行的深度学习

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