Rock Genre Classification Using K-Nearest Neighbor

Main Authors: Yoppy, Sazaki, Adib , Aramadhan
Format: Proceeding PeerReviewed application/pdf
Terbitan: , 2014
Subjects:
Online Access: http://eprints.unsri.ac.id/5482/1/Rock_Genre_Classification_Using_.pdf
http://iconcse.unsri.ac.id
http://eprints.unsri.ac.id/5482/
Daftar Isi:
  • Music genre classification is a part of Music Information Retrieval. This research was a genre music detection based on signal from an audio. Divided into two processes namely extraction of features and classification. Signal would be transformed using Fast Fourier Transform to get frequency domain signal which will be processed to extract Short Time Energy, Spectral Centroid, Spectral Roll-Off, Spectral Flux, and Energy Entropy feature. Besides those features, Zero Crossing Rate would be counted from time-domain signal. in classifying phase, research using k nearest neighbor with accuracy reaching 54,44%