Self-Similarity-Based and Novelty-based loss for music structure analysis

09/05/2023
by   Geoffroy Peeters, et al.
0

Music Structure Analysis (MSA) is the task aiming at identifying musical segments that compose a music track and possibly label them based on their similarity. In this paper we propose a supervised approach for the task of music boundary detection. In our approach we simultaneously learn features and convolution kernels. For this we jointly optimize – a loss based on the Self-Similarity-Matrix (SSM) obtained with the learned features, denoted by SSM-loss, and – a loss based on the novelty score obtained applying the learned kernels to the estimated SSM, denoted by novelty-loss. We also demonstrate that relative feature learning, through self-attention, is beneficial for the task of MSA. Finally, we compare the performances of our approach to previously proposed approaches on the standard RWC-Pop, and various subsets of SALAMI.

READ FULL TEXT
research
11/15/2022

SSM-Net: feature learning for Music Structure Analysis using a Self-Similarity-Matrix based loss

In this paper, we propose a new paradigm to learn audio features for Mus...
research
02/04/2022

Musical Audio Similarity with Self-supervised Convolutional Neural Networks

We have built a music similarity search engine that lets video producers...
research
07/21/2021

Melody Structure Transfer Network: Generating Music with Separable Self-Attention

Symbolic music generation has attracted increasing attention, while most...
research
04/27/2019

Towards Automation of Creativity: A Machine Intelligence Approach

This paper demonstrates emergence of computational creativity in the fie...
research
08/11/2023

Visual Overviews for Sheet Music Structure

We propose different methods for alternative representation and visual a...
research
07/30/2021

Artist Similarity with Graph Neural Networks

Artist similarity plays an important role in organizing, understanding, ...

Please sign up or login with your details

Forgot password? Click here to reset