TimScherr/KIT-GE-3-Cell-Segmentation-for-CTC

Distance-transform-prediction-based segmentation method used for our submission to the 6th edition of the ISBI Cell Tracking Challenge 2021 as team KIT-Sch-GE (2) (now KIT-GE (3)).

33
/ 100
Emerging

This project provides an automated way to accurately outline and identify individual cells within microscopy images, a process known as cell segmentation. You input raw microscopy image data, and it outputs precise boundaries for each cell detected. This tool is designed for biologists, researchers, and anyone working with cell culture imaging who needs to quantify or analyze individual cells.

No commits in the last 6 months.

Use this if you need to precisely segment and analyze various cell types in microscopy images, especially for tasks related to the Cell Tracking Challenge.

Not ideal if you lack a CUDA-capable GPU, have less than 32GB RAM, or require a simple point-and-click graphical interface without command-line interaction.

cell-biology microscopy image-analysis cell-segmentation bioimage-informatics
Stale 6m No Package No Dependents
Maintenance 0 / 25
Adoption 4 / 25
Maturity 16 / 25
Community 13 / 25

How are scores calculated?

Stars

8

Forks

2

Language

Jupyter Notebook

License

MIT

Last pushed

Dec 14, 2022

Commits (30d)

0

Get this data via API

curl "https://pt-edge.onrender.com/api/v1/quality/computer-vision/TimScherr/KIT-GE-3-Cell-Segmentation-for-CTC"

Open to everyone — 100 requests/day, no key needed. Get a free key for 1,000/day.