We investigate a method for automatic extraction of inter-song similarity for songs selected from several genres of Western popular music. The specific purpose of this approach is to evaluate the predictive power of different feature extraction sets based on human perception of music similarity and to develop an algorithm able to reproduce and predict human ratings. The algorithm is a linear model that was trained and tested using perceptual data. We use publicly available algorithms to extract acoustic feature values from 78 songs used in a previous perceptual experiment. Feature value differences between songs are used in a multivariate linear regression calculation to find the optimal weighting coefficients for the feature values to best...
We describe and test the methodological set up for a web-based listening experiment that assesses th...
Automated musical similarity search and retrieval has gained great attention in recent years, as tes...
Leidinio https://doi.org/10.15388/DAMSS.12.2021Nowadays the music is more accessible to us than ever...
We investigate a method for automatic extraction of inter-song similarity for songs selected from se...
While listening to a piece of music, listeners automatically build a mental image of the song by abs...
Music is a complex form of communication in which both artists and cultures express their ideas and ...
While music information retrieval (MIR) has made substantial progress in automatic analysis of audio...
In this article we show that a subgroup of music experts has a reliable and consistent notion of mel...
In this paper, we compare the effectiveness of basic acoustic features and genre annotations when ad...
Systems to predict human judgments of music similarity directly from the audio have generally been b...
Melodic similarity is a central concept in many sub-disciplines of musicology, as well as for many c...
We present a pilot study on ways to increase inter- and intra-rater agreement in quantification of g...
We present first results of experiments using music similarity ratings from human participants for g...
In this article we show that a subgroup of music experts has a reliable and consistent notion of mel...
Music classification is essential for faster Music record recovery. Separating the ideal arrangement...
We describe and test the methodological set up for a web-based listening experiment that assesses th...
Automated musical similarity search and retrieval has gained great attention in recent years, as tes...
Leidinio https://doi.org/10.15388/DAMSS.12.2021Nowadays the music is more accessible to us than ever...
We investigate a method for automatic extraction of inter-song similarity for songs selected from se...
While listening to a piece of music, listeners automatically build a mental image of the song by abs...
Music is a complex form of communication in which both artists and cultures express their ideas and ...
While music information retrieval (MIR) has made substantial progress in automatic analysis of audio...
In this article we show that a subgroup of music experts has a reliable and consistent notion of mel...
In this paper, we compare the effectiveness of basic acoustic features and genre annotations when ad...
Systems to predict human judgments of music similarity directly from the audio have generally been b...
Melodic similarity is a central concept in many sub-disciplines of musicology, as well as for many c...
We present a pilot study on ways to increase inter- and intra-rater agreement in quantification of g...
We present first results of experiments using music similarity ratings from human participants for g...
In this article we show that a subgroup of music experts has a reliable and consistent notion of mel...
Music classification is essential for faster Music record recovery. Separating the ideal arrangement...
We describe and test the methodological set up for a web-based listening experiment that assesses th...
Automated musical similarity search and retrieval has gained great attention in recent years, as tes...
Leidinio https://doi.org/10.15388/DAMSS.12.2021Nowadays the music is more accessible to us than ever...