Music is a complex form of communication in which both artists and cultures express their ideas and identity. When we listen to music we do not simply perceive the acoustics of the sound in a temporal pattern, but also its relationship to other sounds, songs, artists, cultures and emotions. Owing to the complex, culturally-defined distribution of acoustic and temporal patterns amongst these relationships, it is unlikely that a general audio similarity metric will be suitable as a music similarity metric. Hence, we are unlikely to be able to emulate human perception of the similarity of songs without making reference to some historical or cultural context.The success of music classification systems, demonstrates that this difficulty can be o...
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 ...
Large-scale systems for automatic content-based music recommendation require efficient computation o...
Music is a complex form of communication in which both artists and cultures express their ideas and ...
We address the problem of estimating automatically from audio signals the similarity between two pie...
In this paper, we compare the effectiveness of basic acoustic features and genre annotations when ad...
Music similarity is used in many applications ranging from music recommendations to media retrieval ...
Music classification is essential for faster Music record recovery. Separating the ideal arrangement...
We investigate a method for automatic extraction of inter-song similarity for songs selected from se...
Leidinio https://doi.org/10.15388/DAMSS.12.2021Nowadays the music is more accessible to us than ever...
The changing music landscape demands new ways of searching, organizing and recommending music to con...
This paper investigates the concept of variation in music from the perspective of music similarity. ...
We present a pilot study on ways to increase inter- and intra-rater agreement in quantification of g...
We present a method to compare songs based solely on their audio content. Our technique forms a sign...
We present first results of experiments using music similarity ratings from human participants for g...
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 ...
Large-scale systems for automatic content-based music recommendation require efficient computation o...
Music is a complex form of communication in which both artists and cultures express their ideas and ...
We address the problem of estimating automatically from audio signals the similarity between two pie...
In this paper, we compare the effectiveness of basic acoustic features and genre annotations when ad...
Music similarity is used in many applications ranging from music recommendations to media retrieval ...
Music classification is essential for faster Music record recovery. Separating the ideal arrangement...
We investigate a method for automatic extraction of inter-song similarity for songs selected from se...
Leidinio https://doi.org/10.15388/DAMSS.12.2021Nowadays the music is more accessible to us than ever...
The changing music landscape demands new ways of searching, organizing and recommending music to con...
This paper investigates the concept of variation in music from the perspective of music similarity. ...
We present a pilot study on ways to increase inter- and intra-rater agreement in quantification of g...
We present a method to compare songs based solely on their audio content. Our technique forms a sign...
We present first results of experiments using music similarity ratings from human participants for g...
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 ...
Large-scale systems for automatic content-based music recommendation require efficient computation o...