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Pure Python optical flow: Horn-Schunck, Lucas-Kanade

Project description

https://zenodo.org/badge/DOI/10.5281/zenodo.1043971.svg https://travis-ci.org/scivision/pyoptflow.svg?branch=master https://coveralls.io/repos/github/scivision/pyoptflow/badge.svg?branch=master Maintainability

Optical Flow: LucasKanade HornSchunck

Python implementation of optical flow estimation using only the Scipy stack for:

  • Lucas Kanade method

  • Horn Schunck

Install

Requires Python >= 3.6:

pip install -e .

Examples

Box

python HornSchunck.py data/box/box

Office

python HornSchunck.py data/office/office

Rubic

python HornSchunck.py data/rubic/rubic

Sphere

python HornSchunck.py data/sphere/sphere

Comparision with Matlab Computer Vision toolbox

In Matlab directory, similar method in Octave and a comparison plot using Matlab Computer Vision toolbox

Reference

Inspiration

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