One of the popular methods for content-based music similarity estimation is to model timbre with MFCC as a single multivariate Gaussian with full covariance matrix, then use symmetric Kullback-Leibler divergence. From the field of speech recognition, we propose to use the same approach on the MFCCs’ time derivatives to enhance the timbre model. The Gaussian models for the delta and acceleration coefficients are used to create their respective distance matrix. The distance matrices are then combined linearly to form a full distance matrix for music similarity estimation. In our experiments on two datasets, our novel approach performs better than using MFCC alone.Moreover, performing genre classification using k-NN showed that the accuracies...
In this abstract, we propose a method to learn application-specific content-based metrics for music ...
Music is a mysterious language that conveys feeling and thoughts via different tones and timbre. For...
Audio music is increasingly becoming available in digital form, and the digital music collections of...
Abstract. The paper describes two novel variants of the use of the var-iogram as summarizing tool fo...
In this paper, we propose a novel approach for music similarity estimation. It combines temporal seg...
For music information retrieval tasks, a nearest neighbor classifier using the Kullback-Leibler dive...
In music similarity and in the related task of genre classification, a distance measure between Gaus...
Spectral envelope parameters in the form of mel-frequency cepstral coefficients are often used for c...
In this paper, we present a novel approach to extract song-level descriptors built from frame-level ...
The changing music landscape demands new ways of searching, organizing and recommending music to con...
Music is a complex form of communication in which both artists and cultures express their ideas and ...
Lots of work has been done on speech and speaker recognition. Many technologies were developed for t...
Personal multimedia databases contain thousands of items and other databases on the Internet may con...
Measuring music similarity is essential for multimedia retrieval. For music items, this task can be ...
Leidinio https://doi.org/10.15388/DAMSS.12.2021Nowadays the music is more accessible to us than ever...
In this abstract, we propose a method to learn application-specific content-based metrics for music ...
Music is a mysterious language that conveys feeling and thoughts via different tones and timbre. For...
Audio music is increasingly becoming available in digital form, and the digital music collections of...
Abstract. The paper describes two novel variants of the use of the var-iogram as summarizing tool fo...
In this paper, we propose a novel approach for music similarity estimation. It combines temporal seg...
For music information retrieval tasks, a nearest neighbor classifier using the Kullback-Leibler dive...
In music similarity and in the related task of genre classification, a distance measure between Gaus...
Spectral envelope parameters in the form of mel-frequency cepstral coefficients are often used for c...
In this paper, we present a novel approach to extract song-level descriptors built from frame-level ...
The changing music landscape demands new ways of searching, organizing and recommending music to con...
Music is a complex form of communication in which both artists and cultures express their ideas and ...
Lots of work has been done on speech and speaker recognition. Many technologies were developed for t...
Personal multimedia databases contain thousands of items and other databases on the Internet may con...
Measuring music similarity is essential for multimedia retrieval. For music items, this task can be ...
Leidinio https://doi.org/10.15388/DAMSS.12.2021Nowadays the music is more accessible to us than ever...
In this abstract, we propose a method to learn application-specific content-based metrics for music ...
Music is a mysterious language that conveys feeling and thoughts via different tones and timbre. For...
Audio music is increasingly becoming available in digital form, and the digital music collections of...