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Multi-input Architecture and Disentangled Representation Learning for Multi-dimensional Modeling of Music Similarity

Authors :
Ribecky, Sebastian
Abeßer, Jakob
Lukashevich, Hanna
Publication Year :
2021

Abstract

In the context of music information retrieval, similarity-based approaches are useful for a variety of tasks that benefit from a query-by-example scenario. Music however, naturally decomposes into a set of semantically meaningful factors of variation. Current representation learning strategies pursue the disentanglement of such factors from deep representations, resulting in highly interpretable models. This allows the modeling of music similarity perception, which is highly subjective and multi-dimensional. While the focus of prior work is on metadata driven notions of similarity, we suggest to directly model the human notion of multi-dimensional music similarity. To achieve this, we propose a multi-input deep neural network architecture, which simultaneously processes mel-spectrogram, CENS-chromagram and tempogram in order to extract informative features for the different disentangled musical dimensions: genre, mood, instrument, era, tempo, and key. We evaluated the proposed music similarity approach using a triplet prediction task and found that the proposed multi-input architecture outperforms a state of the art method. Furthermore, we present a novel multi-dimensional analysis in order to evaluate the influence of each disentangled dimension on the perception of music similarity.<br />Comment: Submitted to ICASSP 2022

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2111.01710
Document Type :
Working Paper