A WASN-based suburban dataset for anomalous noise event detection on dynamic road-traffic noise mapping

Producció científica: Article en revista indexadaArticleAvaluat per experts

21 Cites (Scopus)

Resum

Traffic noise is presently considered one of the main pollutants in urban and suburban areas. Several recent technological advances have allowed a step forward in the dynamic computation of road-traffic noise levels by means of a Wireless Acoustic Sensor Network (WASN) through the collection of measurements in real-operation environments. In the framework of the LIFE DYNAMAP project, two WASNs have been deployed in two pilot areas: one in the city of Milan, as an urban environment, and another around the city of Rome in a suburban location. For a correct evaluation of the noise level generated by road infrastructures, all Anomalous Noise Events (ANE) unrelated to regular road-traffic noise (e.g., sirens, horns, speech, etc.) should be removed before updating corresponding noise maps. This work presents the production and analysis of a real-operation environmental audio database collected through the 19-node WASN of a suburban area. A total of 156 h and 20 min of labeled audio data has been obtained differentiating among road-traffic noise and ANEs (classified in 16 subcategories). After delimiting their boundaries manually, the acoustic salience of the ANE samples is automatically computed as a contextual Signal-to-Noise Ratio (SNR) together with its impact on the A-weighted equivalent level (∆LAeq ). The analysis of the real-operation WASN-based environmental database is evaluated with these metrics, and we conclude that the 19 locations of the network present substantial differences in the occurrences of the subcategories of ANE, with a clear predominance of the noise of sirens, trains, and thunder.

Idioma originalAnglès
Número d’article2480
RevistaSensors (Switzerland)
Volum19
Número11
DOIs
Estat de la publicacióPublicada - 1 de juny 2019

Fingerprint

Navegar pels temes de recerca de 'A WASN-based suburban dataset for anomalous noise event detection on dynamic road-traffic noise mapping'. Junts formen un fingerprint únic.

Com citar-ho