scikit-surgeryimage implements image processing tools and alogrithms for Image Guided Surgery.
scikit-surgeryimage is a python only project to implement image processing algorithms that are useful for image-guided surgery.
scikit-surgeryimage was developed at the Wellcome EPSRC Centre for Interventional and Surgical Sciences in University College London (UCL).
requirements.txt specifies a dependency on opencv-contrib-python, so you can use any OpenCV python therein. In addition, this project provides:
- Video read and write.
- Utilities to detect the number of cameras and prepare text for overlay on video.
- Functions to make charuco boards, and detect charuco markers.
- Interlacing and deinterlacing.
- Convenience wrappers for erosion and dilation.
You can pip install directly from the repository as follows:
pip install scikit-surgeryimage
You can clone the repository using the following command:
git clone https://weisslab.cs.ucl.ac.uk/WEISS/SoftwareRepositories/SNAPPY/scikit-surgeryimage
Running the tests
You can run the unit tests by installing and running tox:
pip install tox tox
Please check list of common issues.
Please see the contributing guidelines.
Licensing and copyright
Copyright 2018 University College London. scikit-surgeryimage is released under the BSD-3 license. Please see the license file for details.
Release history Release notifications | RSS feed
|Filename, size||File type||Python version||Upload date||Hashes|
|Filename, size scikit_surgeryimage-0.5.2-py2.py3-none-any.whl (36.8 kB)||File type Wheel||Python version py2.py3||Upload date||Hashes View|
Hashes for scikit_surgeryimage-0.5.2-py2.py3-none-any.whl