Significance of magnitude and phase information via VTEO for humming based biometrics

@article{Patil2012SignificanceOM,
  title={Significance of magnitude and phase information via VTEO for humming based biometrics},
  author={Hemant A. Patil and Maulik C. Madhavi},
  journal={2012 5th IAPR International Conference on Biometrics (ICB)},
  year={2012},
  pages={372-377}
}
In this paper, recognition of persons is attempted from their hum. This kind of application can be useful to design humming-based biometrics system or person-dependent Query-by-Humming (QBH) system and hence play an important role in music information retrieval (MIR) system. This paper develops a new feature extraction technique to exploit phase spectrum information along with magnitude spectrum information from hum signal. In particular, structure of state-of-the-art feature set, viz., Mel… CONTINUE READING

Citations

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Exploiting Variable length Teager Energy Operator in melcepstral features for person recognition from humming

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