Feature Selection for Place Classification through Environmental Sounds

@inproceedings{DelgadoContreras2014FeatureSF,
  title={Feature Selection for Place Classification through Environmental Sounds},
  author={J. Ruben Delgado-Contreras and Juan-Pablo Garc{\'i}a-V{\'a}zquez and Ram{\'o}n F. Brena and Carlos Eric Galv{\'a}n-Tejada and Jorge Issac Galv{\'a}n-Tejada},
  booktitle={EUSPN/ICTH},
  year={2014}
}

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