Comparison of features for musical instrument recognition

@article{Eronen2001ComparisonOF,
  title={Comparison of features for musical instrument recognition},
  author={A. Eronen},
  journal={Proceedings of the 2001 IEEE Workshop on the Applications of Signal Processing to Audio and Acoustics (Cat. No.01TH8575)},
  year={2001},
  pages={19-22}
}
  • A. Eronen
  • Published 2001
  • Engineering
  • Proceedings of the 2001 IEEE Workshop on the Applications of Signal Processing to Audio and Acoustics (Cat. No.01TH8575)
Several features were compared with regard to recognition performance in a musical instrument recognition system. Both mel-frequency and linear prediction cepstral and delta cepstral coefficients were calculated. Linear prediction analysis was carried out both on a uniform and a warped frequency scale, and reflection coefficients were also used as features. The performance of earlier described features relating to the temporal development, modulation properties, brightness, and spectral… Expand
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