Title of article :
Pattern classification models for classifying and indexing audio signals
Author/Authors :
Dhanalakshmi، نويسنده , , P. and Palanivel، نويسنده , , S. and Ramalingam، نويسنده , , V.، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2011
Pages :
8
From page :
350
To page :
357
Abstract :
In the age of digital information, audio data has become an important part in many modern computer applications. Audio classification and indexing has been becoming a focus in the research of audio processing and pattern recognition. In this paper, we propose effective algorithms to automatically classify audio clips into one of six classes: music, news, sports, advertisement, cartoon and movie. For these categories a number of acoustic features that include linear predictive coefficients, linear predictive cepstral coefficients and mel-frequency cepstral coefficients are extracted to characterize the audio content. The autoassociative neural network model (AANN) is used to capture the distribution of the acoustic feature vectors. Then the proposed method uses a Gaussian mixture model (GMM)-based classifier where the feature vectors from each class were used to train the GMM models for those classes. During testing, the likelihood of a test sample belonging to each model is computed and the sample is assigned to the class whose model produces the highest likelihood. Audio clip extraction, feature extraction, creation of index, and retrieval of the query clip are the major issues in automatic audio indexing and retrieval. A method for indexing the classified audio using LPCC features and k-means clustering algorithm is proposed.
Keywords :
Autoassociative neural network , Linear predictive coefficients , Mel-frequency cepstral coefficients , K-means clustering , Audio indexing , Linear predictive cepstral coefficients , Gaussian mixture models
Journal title :
Engineering Applications of Artificial Intelligence
Serial Year :
2011
Journal title :
Engineering Applications of Artificial Intelligence
Record number :
2125415
Link To Document :
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