Corpus ID: 9319388

VSEM: An open library for visual semantics representation

@inproceedings{Bruni2013VSEMAO,
  title={VSEM: An open library for visual semantics representation},
  author={Elia Bruni and Ulisse Bordignon and Adam Liska and J. Uijlings and Irina Sergienya},
  booktitle={ACL},
  year={2013}
}
  • Elia Bruni, Ulisse Bordignon, +2 authors Irina Sergienya
  • Published in ACL 2013
  • Computer Science
  • VSEM is an open library for visual semantics. Starting from a collection of tagged images, it is possible to automatically construct an image-based representation of concepts by using off-theshelf VSEM functionalities. VSEM is entirely written in MATLAB and its objectoriented design allows a large flexibility and reusability. The software is accompanied by a website with supporting documentation and examples. 
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