pydensecrf - Python wrapper to Philipp Krähenbühl's dense (fully connected) CRFs with gaussian edge potentials

  •        51

This is a (Cython-based) Python wrapper for Philipp Krähenbühl's Fully-Connected CRFs (version 2, new, incomplete page). and provide a link to this repository as a footnote or a citation.

https://github.com/lucasb-eyer/pydensecrf

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