Publication | Open Access
Robust features for environmental sound classification
15
Citations
10
References
2013
Year
Unknown Venue
MusicSparse RepresentationEngineeringHealth SciencesData ScienceAudio MiningPattern RecognitionEnvironmental SoundNoiseAudio AnalysisRobust FeaturesSpeech ProcessingGaussian Mixture ModelAudio RetrievalAcoustic Signal ProcessingSignal ProcessingAcoustic ModelingSpeech Recognition
In this paper we describe algorithms to classify environmental sounds with the aim of providing contextual information to devices such as hearing aids for optimum performance. We use signal sub-band energy to construct signal-dependent dictionary and matching pursuit algorithms to obtain a sparse representation of a signal. The coefficients of the sparse vector are used as weights to compute weighted features. These features, along with mel frequency cepstral coefficients (MFCC), are used as feature vectors for classification. Experimental results show that the proposed method gives an accuracy as high as 95.6 %, while classifying 14 categories of environmental sound using a gaussian mixture model (GMM).
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