Topological fingerprints for audio identification

09/07/2023
by   Wojciech Reise, et al.
0

We present a topological audio fingerprinting approach for robustly identifying duplicate audio tracks. Our method applies persistent homology on local spectral decompositions of audio signals, using filtered cubical complexes computed from mel-spectrograms. By encoding the audio content in terms of local Betti curves, our topological audio fingerprints enable accurate detection of time-aligned audio matchings. Experimental results demonstrate the accuracy of our algorithm in the detection of tracks with the same audio content, even when subjected to various obfuscations. Our approach outperforms existing methods in scenarios involving topological distortions, such as time stretching and pitch shifting.

READ FULL TEXT

page 5

page 9

page 11

page 14

research
05/10/2019

Multiclass Language Identification using Deep Learning on Spectral Images of Audio Signals

The first step in any voice recognition software is to determine what la...
research
03/09/2023

Towards Robust Image-in-Audio Deep Steganography

The field of steganography has experienced a surge of interest due to th...
research
05/28/2019

Ensemble-based cover song detection

Audio-based cover song detection has received much attention in the MIR ...
research
02/10/2021

A Topological Approach for Motion Track Discrimination

Detecting small targets at range is difficult because there is not enoug...
research
11/02/2022

SpectroMap: Peak detection algorithm for audio fingerprinting

We present SpectroMap, an open source GitHub repository for audio finger...
research
08/17/2017

Automatic Organisation, Segmentation, and Filtering of User-Generated Audio Content

Using solely the information retrieved by audio fingerprinting technique...
research
07/29/2022

Towards Unconstrained Audio Splicing Detection and Localization with Neural Networks

Freely available and easy-to-use audio editing tools make it straightfor...

Please sign up or login with your details

Forgot password? Click here to reset