Home

Awesome

EPIC

Dense Semantic Correspondence where Every Pixel is a Classifier

Hilton Bristow, Jack Valmadre and Simon Lucey,
"Dense Semantic Correspondence where Every Pixel is a Classifier",
International Conference on Computer Vision (ICCV), 2015

EPiC solves the dense semantic correspondence problem by constructing an LDA classifier around every pixel in the source image, and convolving it with every point in the target image to produce a probability likelihood estimate.

The best correspondence is then estimated by regularizing the likelihood with spatial constraints.

Instalation

Using pip, the repository can be cloned and built automatically:

pip install git+https://github.com/hbristow/epic

The requirements are pure-Python, and will be retrieved automatically

NOTES

The initial public release of this research only contains code to build and apply detectors on image pairs. It does not contain functionality to perform regularization. We are working to provide wrappers to SIFT Flow.