Comparison of techniques for environmental sound recognition
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Cowling, Michael
Sitte, Renate
Sitte, Renate
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E Backer & G Sanniti di Baja
Date
2003
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Abstract
This paper presents a comprehensive comparative study of artificial neural networks, learning vector quantization and dynamic time warping classification techniques combined with stationary/non-stationary feature extraction for environmental sound recognition. Results show 70% recognition using mel frequency cepstral coefficients or continuous wavelet transform with dynamic time warping.
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Pattern Recognition Letters
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24
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Subject
Artificial Intelligence and Image Processing
Electrical and Electronic Engineering
Cognitive Sciences