TY - GEN
T1 - Pattern recognition and separation of road noise sources by means of ACF, MFCC and probability density estimation
AU - Valero, Xavier
AU - Alías, Francesc
AU - Kephalopoulos, Stylianos
AU - Paviottid, Marco
PY - 2009
Y1 - 2009
N2 - Noise source separation is a key issue in environmental noise assessment and of particular interest in the implementation of the European Environmental Noise Directive (END, 2002/49/EC), since according to the END the contribution of each single noise source to the overall noise level should be evaluated separately. Therefore, studies were performed in the context of an exploratory research project funded by the Joint Research Centre of the European Commission, with the main objective of investigating on different techniques that could automatically recognise and separate signals of different noise sources. These sources might be cars, trucks, scooters and background noise that commonly appear in real environments but are mixed. As a first step, an automatic recognition system has been fully developed under Matlab platform. The system is composed of two blocks. The first is a signal processing block, which parameterises the acoustic signals using several parameters extracted from the autocorrelation function, Mel energy coefficients or Mel Frequency Cepstral Coefficients. The second is a recognition block, which is based on the probability density estimation of those parameters. In order to check the system's performance, several tests were conducted using audio signals recorded in real environments. In those tests, autocorrelation function parameters showed the best results, with averaged recognition rates close to 80%.
AB - Noise source separation is a key issue in environmental noise assessment and of particular interest in the implementation of the European Environmental Noise Directive (END, 2002/49/EC), since according to the END the contribution of each single noise source to the overall noise level should be evaluated separately. Therefore, studies were performed in the context of an exploratory research project funded by the Joint Research Centre of the European Commission, with the main objective of investigating on different techniques that could automatically recognise and separate signals of different noise sources. These sources might be cars, trucks, scooters and background noise that commonly appear in real environments but are mixed. As a first step, an automatic recognition system has been fully developed under Matlab platform. The system is composed of two blocks. The first is a signal processing block, which parameterises the acoustic signals using several parameters extracted from the autocorrelation function, Mel energy coefficients or Mel Frequency Cepstral Coefficients. The second is a recognition block, which is based on the probability density estimation of those parameters. In order to check the system's performance, several tests were conducted using audio signals recorded in real environments. In those tests, autocorrelation function parameters showed the best results, with averaged recognition rates close to 80%.
UR - http://www.scopus.com/inward/record.url?scp=84864651489&partnerID=8YFLogxK
M3 - Conference contribution
AN - SCOPUS:84864651489
SN - 9781615676804
T3 - 8th European Conference on Noise Control 2009, EURONOISE 2009 - Proceedings of the Institute of Acoustics
BT - 8th European Conference on Noise Control 2009, EURONOISE 2009 - Proceedings of the Institute of Acoustics
T2 - 8th European Conference on Noise Control 2009, EURONOISE 2009
Y2 - 26 October 2009 through 28 October 2009
ER -