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Normalization techniques for STXM images.

Project description

STXM Normalization is a PyQt-based graphical user interface. It allows for normalization of images collected in the TwinMic beamline through Scanning transmission x-ray microscopy (STXM) imaging technique.


README

Introduction

To do.

Installation

For standard Python installations, install stxmnorm using pip:

pip install -U pip setuptools
pip install stxmnorm

Usage

Once the installation has finished just type on the command line:

stxmNorm

Requirements

To fix

Project details


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