Details Details PDF BIBTEX RIS Title Hybridisation of Mel Frequency Cepstral Coefficient and Higher Order Spectral Features for Musical Instruments Classification Journal title Archives of Acoustics Yearbook 2016 Volume vol. 41 Issue No 3 Authors Bhalke, Daulappa Guranna ; Rao, C. B. Rama ; Bormane, Dattatraya Keywords feature extraction ; MFCC ; HOS ; bispectrum ; bicoherence ; non-linearity ; non-Gaussianity ; CPNN ; Zero Crossing Rate (ZCR) Divisions of PAS Nauki Techniczne Coverage 427-436 Publisher Polish Academy of Sciences, Institute of Fundamental Technological Research, Committee on Acoustics Date 2016 Type Artykuły / Articles Identifier DOI: 10.1515/aoa-2016-0042 Source Archives of Acoustics; 2016; vol. 41; No 3; 427-436 References Kostek (2008), Music information analysis and retrieval techniques of Acoustics, Archives, 33, 483. ; Ajmera (2012), Robust feature extraction from spectrum estimated using Bispectrum for speaker recognition of Speech Technology, Int Journal, 15, 433. ; Eronen (2000), Musical Instrument Recognition using cepstral coefficients and temporal features in of IEEE International Conference on Acoustics Speech and Signal Processing, Proc, 2, 753756. ; Kostek (2004), Application of soft computing to automatic music information retrieval of American Society for Information Science and Technology, Journal, 55, 12. ; Kostek (2004), Musical instrument classification and duet analysis employing music information retrieval techniques, Proc IEEE, 92, 712, doi.org/10.1109/JPROC.2004.825903 ; Kostek (1997), Parametric representation of musical sounds of Acoustics, Archives, 22, 1. ; Kostek (2001), Representing musical instrument sounds for their automatic classification of Audio Engineering, Journal Society, 49, 768. ; Byun (2002), Applications of support vector machines for pattern recognition in of the International Workshop on Pattern Recognition with Support Vector Machine pp, Proc, 213. ; Dubnov (2003), Investigation of phase coupling phenomena in sustained portion of musical instruments sound, Soc Am, 113. ; Goppert (1993), Self - organizing maps vs back - propagation : An experimental study of pp, Proc Work Design Methodol Microelectron Signal Process, 153. ; Goshvarpour (2012), Bispectrum Estimation of Electroencephalogram Signal During Meditation, Psychiatry Behav Sci, 6. ; Kostek (1997), Application of artificial neural networks to the recognition of musical sounds of Acoustics, Archives, 22, 1. ; Kaminskyj (2005), Automatic Recognition of Isolated Monophonic Musical Instrument Sounds using kNNC of Intelligent Information Systems, Journal, 24, 199. ; Bordolois (2012), Classification of Motor imagery based on Hybrid features of Bispectrum of EEG International Conference on Communications Devices and Intelligent Systems pp, IEEE, 123. ; Agostini (2003), Musical instrument timbre classification with spectral features, Appl Signal Process, 1. ; Essid (2006), Hierarchical Classification of Musical Instruments on Solo Recordings in of IEEE International Conference on Acoustics Speech and Signal Processing, Proc, 5, 14. ; Kostek (2007), Applying computational intelligence to musical acoustics of Acoustics, Archives, 32, 617. ; Bhalke (2014), Musical Instrument Classification using Higher Order Spectra International Conference on Signal Processing and Integrated Networks Feb, SPIN, 20, 2014. ; Liu (2010), Excitation signature extraction for pitched musical instrument timbre analysis using Higher Order Statistics International Conference on Multimedia and Expo, IEEE, 19, 5582571.