Environmental noise classifier using a new set of feature parameters based on pitch range |
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Authors: | Buket D. Barkana Burak Uzkent |
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Affiliation: | Department of Electrical Engineering, University of Bridgeport, 221 University Ave., Bridgeport, CT, USA |
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Abstract: | Automatic Noise Recognition was performed in two stages: (1) feature extraction based on the pitch range, found by analyzing the autocorrelation function and (2) classification using a classifier trained on the extracted features. Since most environmental noise types change their acoustical characteristics over time, we focused on the “pitch range” of the sounds in order to extract features. Two different classifiers, Support Vector Machines (SVM) and k-means clustering, were performed and compared using the proposed features. The SVM and k-means clustering classifiers achieve recognition rates up to 95.4% and 92.8%, respectively. Although both classifiers provided high accuracy, the SVM-based classifier outperformed the k-means clustering classifier by approximately 7.4%. |
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Keywords: | Abbreviations: SVM, Support Vector Machines ANR, Automatic Noise Recognition ANN, Artificial Neural Networks HMM, Hidden Markov Models MFCCs, Mel Frequency Cepstral Coefficients LPC, Linear Prediction Coefficients GMM, Gaussian Mixture Models ACF, Autocorrelation Function ASR, Automatic Speech Recognition RBF, Radial Basis Function LVQ, Learning Vector Quantization |
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