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KMID : 1022420090010010063
Phonetics and Speech Sciences
2009 Volume.1 No. 1 p.63 ~ p.67
HMM-based Music Identification System for Copyright Protection
Kim Hee-Dong

Kim Do-Hyun
Kim Ji-Hwan
Abstract
In this paper, in order to protect music copyrights, we propose a music identification system which is scalable to the number of pieces of registered music and robust to signal-level variations of registered music. For its implementation, we define the new concepts of ¡¯music word¡¯ and ¡¯music phoneme¡¯ as recognition units to construct ¡¯music acoustic models¡¯. Then, with these concepts, we apply the HMM-based framework used in continuous speech recognition to identify the music. Each music file is transformed to a sequence of 39-dimensional vectors. This sequence of vectors is represented as ordered states with Gaussian mixtures. These ordered states are trained using Baum-Welch re-estimation method. Music files with a suspicious copyright are also transformed to a sequence of vectors. Then, the most probable music file is identified using Viterbi algorithm through the music identification network. We implemented a music identification system for 1,000 MP3 music files and tested this system with variations in terms of MP3 bit rate and music speed rate. Our proposed music identification system demonstrates robust performance to signal variations. In addition, scalability of this system is independent of the number of registered music files, since our system is based on HMM method.
KEYWORD
music identification, HMM, copyright protection, music word, music phoneme
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