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The CellCognition Project

Copyright (c) 2006 - 2015 Gerlich Lab, IMBA Vienna, Austria
CellCognition is distributed under the terms of LGPL.

www.cellcognition.org
doc.cellcognition.org

Building the C++ Extension

To compile the ccore extension you need to adopt the library/include paths in the setup.cfg accordingly.

Dependcies are:

  • libvigraimpex
  • libtiff

Remove the build- and dist directories and also the file cecog/ccore/_cecog.so(pyd)

Development build

python setup.py build_ext --inplace

System installation:

python setup.py install --prefix=<path-to-prefix>

MacOSX

Run the make file.

Using VCXX Professional

Run build_win64_bin.bat

Demo data (battery package)

The demo data contains:

  • A small set of raw images (10 timepoints of H2b-aTubulin).
  • The two classifiers for H2b and aTubulin to test classification.
  • A pre-configured settings file which is loaded on start-up.

Using the demo data it is possible to:

  • Run segmentation on H2b (primary) and aTubulin (secondary) channels.
  • Test the classifier for H2b and aTubulin channels.

#####Files:

  • Settings
    • demo_settings.conf, the settings file which is loaded on startup
    • graph_primary.xml, an example for a graph definition file (H2b)
    • graph_secondary.xml, an example for a graph definition file (Tubulin)
  • Classifiers
    • H2B
    • aTubulin
  • Images

H2B-Tubulin data set

The demo data included in the installer contains only a hand full of images i.e. 10 time frames. Please download the bigger H2B-Tubulin image set to perform:

  • Classifier training and cross validation
  • Event selection
  • Error correction

It contains 206 frames with ~3.6 min. timelapse. Use the same settings except for the parameter Duration [post]. It is recommended to increase it to 35 frames.

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A fast and cross-platform image analysis framework for fluorescence time-lapse microscopy and bioimage informatics.

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