Title :
Sound detection and classification through transient models usingwavelet coefficient trees
Author :
Vacher, Michel ; Istrate, Dan ; Serignat, Jean-Francois
Author_Institution :
CLIPS, UJF, Grenoble, France
Abstract :
Medical Telesurvey needs human operator assistance by smart information systems. Usual sound classification may be applied to medical monitoring by use of microphones in patient´s habitation. Detection is the first step of our sound analysis system and is necessary to extract the significant sounds before initiating the classification step. This paper proposes a detection method using transient models, based upon dyadic trees of wavelet coefficients to insure short detection delay. The classification stage uses a Gaussian Mixture Model classifier with classical acoustical parameters like MFCC. Detection and classification stages are evaluated in experimental recorded noise condition which is nonstationary and more aggressive than simulated white noise and fits with our application. Wavelet filtering methods are proposed to enhance performances in low signal to noise ratios.
Keywords :
Gaussian processes; acoustic signal detection; acoustic signal processing; biomedical ultrasonics; filtering theory; medical signal processing; mixture models; patient monitoring; signal classification; trees (mathematics); wavelet transforms; Gaussian mixture model classifier; MFCC; classical acoustical parameters; dyadic trees; human operator assistance; low signal to noise ratios; medical monitoring; medical telesurvey; microphones; patient habitation; short detection delay; smart information systems; sound analysis system; sound classification; sound detection method; transient models; wavelet coefficient trees; wavelet filtering methods; Abstracts; Collaboration; Detection algorithms; Discrete wavelet transforms; Laboratories; Signal to noise ratio;
Conference_Titel :
Signal Processing Conference, 2004 12th European
Conference_Location :
Vienna
Print_ISBN :
978-320-0001-65-7