This repository implements common functionality for (large-scale) bio-medical image analysis:
- evaluation: evaluation of partitions via rand index and variation of information
- io: common interface for different libraries / formats
- parallel: parallel / larger than memory implementation of common numpy functions
- segmentation: graph-partition based segmentation
- skeleton: skeletonization
- transformation: helper functions for affine transformations
- wrapper: volume wrappers for on-the-fly transformations
- tracking: graph based tracking algorithms
and more.
See examples
for some usage examples. For processing large data on a cluster, check out cluster_tools, which uses a lot of elf
functionality internally.
It is used by several down-stream dependencies:
Install the package from source and in development mode via
pip install -e .
or via conda
conda install -c conda-forge python-elf
Segmentation: elf
implements graph-based segmentation using the implementations of multict, lifted multicut and other graph partitioning approaches from nifty.
Check out the examples to see how to use this functionality for segmenting your data.
Tracking: elf
implements graph-based tracking using the implementations from motile.
Checkout the examples to see how to use this functionality to track your data.
In order to use this functionality you will need to install motile
. You can do this via
conda install -c conda-forge -c funkelab -c gurobi ilpy
and then
pip install motile