Zehtabi, Sonmaz2012-04-302012-04-3020122012-04-30http://hdl.handle.net/1828/3960This thesis presents a comparison between two factorization techniques { Probabilistic Latent Component Analysis (PLCA) and Non-Negative Least Squares (NNLSQ) { for the problem of detecting note events played by a vibraphone, using a microphone for sound acquisition in the context of live performance. Ambient noise is reduced by using specifi c dictionary codewords to model the noise. The results of the factorization are analyzed by two causal onset detection algorithms: a rule-based algorithm and a trained machine learning based classi fier. These onset detection algorithms yield decisions on when note events happen. Comparative results are presented, considering a database of vibraphone recordings with di fferent levels of noise, showing the conditions under which the event detection is reliable.enVibraphoneMusic transcriptionNoisy audioFactorizationVibraphone transcription from noisy audio using factorization methodsThesisAvailable to the World Wide Web