Title :
Computational Models of Similarity for Drum Samples
Author :
Pampalk, Elias ; Herrera, Perfecto ; Goto, Masataka
Author_Institution :
Nat. Inst. of Adv. Ind. Sci. & Technol. (AIST), Tsukuba
Abstract :
In this paper, we optimize and evaluate computational models of similarity for sounds from the same instrument class. We investigate four instrument classes: bass drums, snare drums, high-pitched toms, and low-pitched toms. We evaluate two similarity models: one is defined in the ISO/IEC MPEG-7 standard, and the other is based on auditory images. For the second model, we study the impact of various parameters. We use data from listening tests, and instrument class labels to evaluate the models. Our results show that the model based on auditory images yields a very high average correlation with human similarity ratings and clearly outperforms the MPEG-7 recommendation. The average correlations range from 0.89-0.96 depending on the instrument class. Furthermore, our results indicate that instrument class data can be used as alternative to data from listening tests to evaluate sound similarity models.
Keywords :
IEC standards; ISO standards; musical instruments; video coding; ISO-IEC MPEG-7 standard; auditory images; bass drums; computational models; drum samples; high-pitched toms; low-pitched toms; snare drums; sound similarity models; Acoustic testing; Computational modeling; Computer interfaces; Humans; IEC standards; ISO standards; Instruments; Libraries; MPEG 7 Standard; Music information retrieval; Content-based similarity; drum sounds; percussive music instruments;
Journal_Title :
Audio, Speech, and Language Processing, IEEE Transactions on
DOI :
10.1109/TASL.2007.910783