Measuring music similarity is essential for multimedia retrieval. For music items, this task can be regarded as obtaining a suitable distance measurement between songs defined on a certain feature space. In this paper, we propose three of such distance measures based on the audio content: first, a low-level measure based on tempo-related description; second, a high-level semantic measure based on the inference of different musical dimensions by support vector machines. These dimensions include genre, culture, moods, instruments, rhythm, and tempo annotations. Third, a hybrid measure which combines the above-mentioned distance measures with two existing low-level measures: a Euclidean distance based on principal component analysis of timbral...
We address the problem of estimating automatically from audio signals the similarity between two pie...
International audienceThe choice of the distance measure between time-series representations can be ...
In this abstract, we propose a method to learn application-specific content-based metrics for music ...
Measuring music similarity is essential for multimedia retrieval. For music items, this task can be ...
One of the goals in the field of Music Information Retrieval is to obtain a measure of similarity be...
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 ...
Music is a complex form of communication in which both artists and cultures express their ideas and ...
Personal multimedia databases contain thousands of items and other databases on the Internet may con...
Personal multimedia databases contain thousands of items and other databases on the Internet may con...
We propose an automatic method for measuring content-based music similarity, enhancing the current g...
Music similarity is used in many applications ranging from music recommendations to media retrieval ...
In this abstract, we propose a method to learn application-specific content-based metrics for music ...
International audienceThe choice of the distance measure between time-series representations can be ...
International audienceThe choice of the distance measure between time-series representations can be ...
We address the problem of estimating automatically from audio signals the similarity between two pie...
International audienceThe choice of the distance measure between time-series representations can be ...
In this abstract, we propose a method to learn application-specific content-based metrics for music ...
Measuring music similarity is essential for multimedia retrieval. For music items, this task can be ...
One of the goals in the field of Music Information Retrieval is to obtain a measure of similarity be...
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 ...
Music is a complex form of communication in which both artists and cultures express their ideas and ...
Personal multimedia databases contain thousands of items and other databases on the Internet may con...
Personal multimedia databases contain thousands of items and other databases on the Internet may con...
We propose an automatic method for measuring content-based music similarity, enhancing the current g...
Music similarity is used in many applications ranging from music recommendations to media retrieval ...
In this abstract, we propose a method to learn application-specific content-based metrics for music ...
International audienceThe choice of the distance measure between time-series representations can be ...
International audienceThe choice of the distance measure between time-series representations can be ...
We address the problem of estimating automatically from audio signals the similarity between two pie...
International audienceThe choice of the distance measure between time-series representations can be ...
In this abstract, we propose a method to learn application-specific content-based metrics for music ...