A Transfer Learning Exploited for Indexing Protein Structures from 3D Point Clouds

@inproceedings{Benhabiles2018ATL,
  title={A Transfer Learning Exploited for Indexing Protein Structures from 3D Point Clouds},
  author={Halim Benhabiles and Karim Hammoudi and F{\'e}ryal Windal and Mahmoud Melkemi and Adnane Cabani},
  booktitle={SaMBa@MICCAI},
  year={2018},
  url={https://api.semanticscholar.org/CorpusID:84182210}
}
Comparative study and performance evaluation show the efficiency and the potential of the proposed transfer learning-based methodology for indexing protein structures from associated 3D point clouds.

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