Title :
Multipitch Estimation of Piano Sounds Using a New Probabilistic Spectral Smoothness Principle
Author :
Emiya, Valentin ; Badeau, Roland ; David, Bertrand
Author_Institution :
Metiss Team, Centre Inria Rennes-Bretagne Atlantique, Rennes, France
Abstract :
A new method for the estimation of multiple concurrent pitches in piano recordings is presented. It addresses the issue of overlapping overtones by modeling the spectral envelope of the overtones of each note with a smooth autoregressive model. For the background noise, a moving-average model is used and the combination of both tends to eliminate harmonic and sub-harmonic erroneous pitch estimations. This leads to a complete generative spectral model for simultaneous piano notes, which also explicitly includes the typical deviation from exact harmonicity in a piano overtone series. The pitch set which maximizes an approximate likelihood is selected from among a restricted number of possible pitch combinations as the one. Tests have been conducted on a large homemade database called MAPS, composed of piano recordings from a real upright piano and from high-quality samples.
Keywords :
acoustic signal processing; autoregressive processes; musical instruments; probability; smoothing methods; spectral analysis; MAPS; homemade database; moving-average model; multipitch estimation; overlapping overtones; piano overtone series; piano recordings; piano sounds; probabilistic spectral smoothness principle; smooth autoregressive model; spectral envelope modeling; Acoustic signal analysis; audio processing; multipitch estimation (MPE); piano; spectral smoothness; transcription;
Journal_Title :
Audio, Speech, and Language Processing, IEEE Transactions on
DOI :
10.1109/TASL.2009.2038819