NeuTomPy-toolbox:用于断层扫描数据处理和重建的Python软件包

上传者: 42131861 | 上传时间: 2024-06-03 11:32:55 | 文件大小: 3.7MB | 文件类型: ZIP
NeuTomPy工具箱 NeuTomPy工具箱是用于层析数据处理和重建的Python软件包。 这样的工具箱包括预处理算法,伪影去除和广泛的迭代重建方法以及“滤波反投影”算法。 NeuTomPy工具箱最初是为中子断层扫描术设计的,旨在满足用户和研究人员比较最新的重建方法并为其数据选择最佳数据处理工作流程的需求。 特征 TIFF和FITS文件以及图像堆栈的读写器 通过剂量校正,旋转轴倾斜校正,环形滤波器,异常值去除,光束硬化校正进行数据归一化 由提供支持的多种重建算法:FBP,SIRT,SART,ART,CGLS,NN-FBP,MR-FBP 多种指标的图像质量评估 安装 NeuTomPy工具箱支持Linux , Windows和Mac OS 64位操作系统。 首先,使用Python 3.6安装 python环境,然后将其激活: conda create -n ntp_env pyth

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