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Automated identification of cell boundaries from the pathological video data

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Cell Segmentation

Introduction

This project aims at performing automated identification of cell boundaries from the pathological video data. We are given the video file cells.avi as input. The problem statement can be found here.

Compatibility

  • This code has been tested on Ubuntu 16.04 LTS and Windows 10
  • Dependencies - Python 2.7 & 3.5, OpenCV 3.0+

Methods Used

Usage

First clone the repository by typing: git clone https://github.com/iitmcvg/Cell-Segmentation.git.

Structured Forest

  • First execute python framesaver.py to save the frames for structured forest.
  • Next execute python StructuredForests.py to apply the edge detection.
  • Finally, execute python videowriter.py to write the outputs to a video file.

Results

  • The video edge.avi is the result after applying Structured Forest algorithm. Other outputs can be found in the Outputs folder.
  • Outputs of all methods can be seen at once in this video.

References

Our Structured Forest is an implementation of Artanis CV Structured Forest.

Future work

  • U-net convolutional neural network can be used.

  • Implementing the algorithm given in this paper.

Disclaimer

This software is published for academic and non-commerical use only.

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