| Literature DB >> 29023397 |
Joan Claudi Socoró1, Francesc Alías2, Rosa Ma Alsina-Pagès3.
Abstract
One of the main aspects affecting the quality of life of people living in urban and suburban areas is their continued exposure to high Road Traffic Noise (RTN) levels. Until now, noise measurements in cities have been performed by professionals, recording data in certain locations to build a noise map afterwards. However, the deployment of Wireless Acoustic Sensor Networks (WASN) has enabled automatic noise mapping in smart cities. In order to obtain a reliable picture of the RTN levels affecting citizens, Anomalous Noise Events (ANE) unrelated to road traffic should be removed from the noise map computation. To this aim, this paper introduces an Anomalous Noise Event Detector (ANED) designed to differentiate between RTN and ANE in real time within a predefined interval running on the distributed low-cost acoustic sensors of a WASN. The proposed ANED follows a two-class audio event detection and classification approach, instead of multi-class or one-class classification schemes, taking advantage of the collection of representative acoustic data in real-life environments. The experiments conducted within the DYNAMAP project, implemented on ARM-based acoustic sensors, show the feasibility of the proposal both in terms of computational cost and classification performance using standard Mel cepstral coefficients and Gaussian Mixture Models (GMM). The two-class GMM core classifier relatively improves the baseline universal GMM one-class classifier F1 measure by 18.7% and 31.8% for suburban and urban environments, respectively, within the 1-s integration interval. Nevertheless, according to the results, the classification performance of the current ANED implementation still has room for improvement.Entities:
Keywords: anomalous noise events; background noise; binary classification; dynamic noise mapping; real-life audio database; real-time acoustic event detection; road traffic noise; urban and suburban environments; wireless acoustic sensor network
Year: 2017 PMID: 29023397 PMCID: PMC5677313 DOI: 10.3390/s17102323
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Example of the low-cost smart acoustic sensor positioning in a suburban environment (pictures loaned courtesy of ANAS S.p.A.) and the ANED functional block diagram.
Figure 2Classification performance of the studied classifiers for the suburban and urban scenarios.
Figure 3Computational cost comparison among the considered machine learning approaches.
Figure 4Boxplots of the classifiers’ performance at the (a) frame level and (b) high level on the suburban environment considering the binary-based GMM and UGMM classifiers and MFCC features, as well as following a leave-one-out cross-validation scheme.
Figure 5Boxplots of the classifiers’ performance at the (a) frame level and (b) high level on the urban environment considering the binary-based GMM and UGMM classifiers and MFCC features, as well as following a leave-one-out cross-validation scheme.
Figure 6Boxplots of differences of the classifiers’ performance between high-level and frame-based decisions using the binary-based GMM classifier following a leave-one-out cross-validation scheme. Results are shown for suburban (left-side) and urban environments (right-side), separately.