Livecell Segmentation - Bioimage.io
- jose-miguelserra-l
- Jan 1, 2016
- 2 min read
Updated: May 7

Author
Constantin Pape
Description
This model segments cells in phase-contrast microscopy images, which are often used in live-cell imaging. It predicts boundary maps and foreground probabilities.
The boundaries can be processed e.g. with Cell Segmentation Recipe or Pixel classifier to obtain an instance segmentation.
Input channel: 2D images, phase-contrast microscopy
Scale: 0.806 um/pixel (10x)
Bit depth: 8-bit
Output channel: Channel 0, foreground probabilities, Channel 1: probability of boundary maps
This model was downloaded and converted from BioImage.io, respecting the associated license (see License section below for more information)
Download
By downloading, installing, copying, accessing, or using the software, you agree to the terms of this end user license agreement.
Download model file and test image (ZIP archive)
Requirements
Make sure you have installed Aivia and the required DeepLearning module (according to our Wiki).
Installation and apply instructions
Aivia is required for applying the model file. You can request a demo copy of Aivia here.
Drag-and-drop the model file into the Recipe Console area; or use the 'Load recipe' option in the Recipe Console to load the model file.
Load the test image (or any image of your own) into Aivia.
If your image contains more than one channel, click on the 'Input & Output' section and specify the image channel you wish to apply the model on.
Click 'Start' to apply the model.
License
Copyright 2022 Constantin Pape, CC-BY-4.0. Full license information can be found here.
Acknowledgement
Bioimage.io is supported by AI4Life. AI4Life has received funding from the European Union's Horizon Europe research and innovation program under grant agreement number 101057970.
About AI4Life: https://ai4life.eurobioimaging.eu/.
References
The network was trained on data from the LiveCell publication https://doi.org/10.1038/s41592-021-01249-6
LIVECell—A large-scale dataset for label-free live cell segmentation
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