Biophonies, anthropophonies and geophonies characterize and shape an environment and contribute to the human appreciation of that place. Thus, sound event classification can be a useful tool to assess its quality and detect changes affecting it. In this study, different machinelearning models for multilabel sound classification are tested to monitor the ante-opera situation of the renewed square “Piazza della Scienza” of the University of Milano- Bicocca (Italy). The one-week monitoring was performed in May 2023 using 7 Song-Meter-Micros. The recordings were equalized to correct the devices’ nonlinear frequency response. The paper is structured to: (a) test two sets of features in the Piazza’s polluted soundscape by constant ventilation noise and other anthropogenic sources: YAMNet embeddings and classic audio features (such as MFCCs), (b) find the best algorithm between: decision tree, random forest, k-nearest neighbor and support vector classifier and (c) evaluate their performance when filtering the background ventilation noise to increase the datasets size. Preliminary results are presented with the final aim of optimizing the detection and applying it to describe the Piazza’s soundscape, investigate differences in events spatial distribution, and evaluate the effects of the urban regeneration plan on the soundscape.

Potenza, A., Vidaña-Vila, E., Afify, A., Benocci, R., Alsina-Pagès, R., Zambon, G. (2025). Preliminary Results On Audio Event Classification Applied To A University Square In Milan (Italy) Before An Urban Regeneration Project. Intervento presentato a: Forum Acusticum Euronoise 2025. 11th Convention of the European Acoustics Association, Malaga, Spain.

Preliminary Results On Audio Event Classification Applied To A University Square In Milan (Italy) Before An Urban Regeneration Project

Potenza A.
Primo
;
2025

Abstract

Biophonies, anthropophonies and geophonies characterize and shape an environment and contribute to the human appreciation of that place. Thus, sound event classification can be a useful tool to assess its quality and detect changes affecting it. In this study, different machinelearning models for multilabel sound classification are tested to monitor the ante-opera situation of the renewed square “Piazza della Scienza” of the University of Milano- Bicocca (Italy). The one-week monitoring was performed in May 2023 using 7 Song-Meter-Micros. The recordings were equalized to correct the devices’ nonlinear frequency response. The paper is structured to: (a) test two sets of features in the Piazza’s polluted soundscape by constant ventilation noise and other anthropogenic sources: YAMNet embeddings and classic audio features (such as MFCCs), (b) find the best algorithm between: decision tree, random forest, k-nearest neighbor and support vector classifier and (c) evaluate their performance when filtering the background ventilation noise to increase the datasets size. Preliminary results are presented with the final aim of optimizing the detection and applying it to describe the Piazza’s soundscape, investigate differences in events spatial distribution, and evaluate the effects of the urban regeneration plan on the soundscape.
abstract + slide
Sound event classification, YAMNet, MFCCs, soundscape, background noise
English
Forum Acusticum Euronoise 2025. 11th Convention of the European Acoustics Association
2025
2025
open
Potenza, A., Vidaña-Vila, E., Afify, A., Benocci, R., Alsina-Pagès, R., Zambon, G. (2025). Preliminary Results On Audio Event Classification Applied To A University Square In Milan (Italy) Before An Urban Regeneration Project. Intervento presentato a: Forum Acusticum Euronoise 2025. 11th Convention of the European Acoustics Association, Malaga, Spain.
File in questo prodotto:
File Dimensione Formato  
Potenza-2025-Forum Acusticum Euronoise-VoR.pdf

accesso aperto

Descrizione: Paper
Tipologia di allegato: Publisher’s Version (Version of Record, VoR)
Licenza: Altro
Dimensione 6.63 MB
Formato Adobe PDF
6.63 MB Adobe PDF Visualizza/Apri

I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.

Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/567245
Citazioni
  • Scopus ND
  • ???jsp.display-item.citation.isi??? ND
Social impact