Corpus ID: 18171581

Memory-efficient Global Refinement of Decision-Tree Ensembles and its Application to Face Alignment

@inproceedings{Markus2018MemoryefficientGR,
  title={Memory-efficient Global Refinement of Decision-Tree Ensembles and its Application to Face Alignment},
  author={N. Markus and Ivan Gogic and I. Pandzic and J. Ahlberg},
  booktitle={BMVC},
  year={2018}
}
  • N. Markus, Ivan Gogic, +1 author J. Ahlberg
  • Published in BMVC 2018
  • Computer Science
  • Ren et al. [17] recently introduced a method for aggregating multiple decision trees into a strong predictor by interpreting a path taken by a sample down each tree as a binary vector and performin ... 

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