Towards Cover Song Detection with Siamese Convolutional Neural Networks

05/20/2020
by   Marko Stamenovic, et al.
0

A cover song, by definition, is a new performance or recording of a previously recorded, commercially released song. It may be by the original artist themselves or a different artist altogether and can vary from the original in unpredictable ways including key, arrangement, instrumentation, timbre and more. In this work we propose a novel approach to learning audio representations for the task of cover song detection. We train a neural architecture on tens of thousands of cover-song audio clips and test it on a held out set. We obtain a mean precision@1 of 65 better than random guessing. Our results indicate that Siamese network configurations show promise for approaching the cover song identification problem.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/22/2023

Siamese SIREN: Audio Compression with Implicit Neural Representations

Implicit Neural Representations (INRs) have emerged as a promising metho...
research
10/30/2017

Content-based Representations of audio using Siamese neural networks

In this paper, we focus on the problem of content-based retrieval for au...
research
12/01/2017

Audio Cover Song Identification using Convolutional Neural Network

In this paper, we propose a new approach to cover song identification us...
research
07/03/2019

Cover Detection using Dominant Melody Embeddings

Automatic cover detection – the task of finding in an audio database all...
research
07/14/2022

Audio-guided Album Cover Art Generation with Genetic Algorithms

Over 60,000 songs are released on Spotify every day, and the competition...
research
08/29/2011

Characterization and exploitation of community structure in cover song networks

The use of community detection algorithms is explored within the framewo...
research
05/28/2019

Ensemble-based cover song detection

Audio-based cover song detection has received much attention in the MIR ...

Please sign up or login with your details

Forgot password? Click here to reset