Title :
On detecting note onsets in piano music
Author :
Marolt, Matija ; Kavcic, Alenka ; Privosnik, Marko ; Divjak, Sasa
Author_Institution :
Fac. of Comput. & Inf. Sci., Ljubljana Univ., Slovenia
Abstract :
This paper presents an overview of our researches in the use of connectionist systems for transcription of polyphonic piano music and concentrates on the issue of onset detection in musical signals. We propose a new technique for detecting onsets in a piano performance. The technique is based on a combination of a bank of auditory filters, a network of integrate-and-fire neurons and a multilayer perceptron. Such a structure introduces several advantages over the standard peak-picking onset detection approach and we present its performance on several synthesized and real piano recordings. Results show that our approach represents a viable alternative to existing onset detection algorithms.
Keywords :
acoustic signal detection; audio signal processing; channel bank filters; electronic music; filtering theory; hearing; multilayer perceptrons; musical instruments; SONIC; auditory filter bank; connectionist systems; integrate-and-fire neurons; multilayer perceptron; musical note onsets detection; musical signals; onset detection algorithms; peak-picking onset detection; piano music; polyphonic piano music transcription; polyphonic pitch recognition; real piano recordings; synthesized piano recordings; Acoustic signal detection; Background noise; Detection algorithms; Information science; Instruments; Machine learning algorithms; Multiple signal classification; Music; Neural networks; Timbre;
Conference_Titel :
Electrotechnical Conference, 2002. MELECON 2002. 11th Mediterranean
Print_ISBN :
0-7803-7527-0
DOI :
10.1109/MELECON.2002.1014600