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Implementation of Bicepstral Target Classifier With Support Vector Machines for Noise Sources in the Ocean


Affiliations
1 Department of Electronics, Cochin University of Science and Technology, Cochin-682022, Kerala, India
 

Higher order spectral analysis is becoming one of the key areas in marine acoustic signal processing, especially for the classification and identification of noise generating mechanisms. This paper investigates the feasibility of a target classifier with bicepstral features. Bicepstral coefficients are extracted from the noise data waveform after framing and windowing operations. These features are then used to train a support vector machine classifier. Various kernels are analyzed for the performance measure. It is found that SVM with a radial basis function kernel could achieve a success rate of 80.5%. The kernel parameters were chosen after performing grid search and cross validation. The result indicates that the bicepstral features could be utilized efficiently to form feature sets that could greatly aid in the classification process.

Keywords

Spectral Analysis, Bicepstral Coefficients, Vector Machines, Ocean Noise.
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  • Implementation of Bicepstral Target Classifier With Support Vector Machines for Noise Sources in the Ocean

Abstract Views: 242  |  PDF Views: 0

Authors

K. Mohankumar
Department of Electronics, Cochin University of Science and Technology, Cochin-682022, Kerala, India
M. H. Supriya
Department of Electronics, Cochin University of Science and Technology, Cochin-682022, Kerala, India
P. R. Saseendran Pillai
Department of Electronics, Cochin University of Science and Technology, Cochin-682022, Kerala, India

Abstract


Higher order spectral analysis is becoming one of the key areas in marine acoustic signal processing, especially for the classification and identification of noise generating mechanisms. This paper investigates the feasibility of a target classifier with bicepstral features. Bicepstral coefficients are extracted from the noise data waveform after framing and windowing operations. These features are then used to train a support vector machine classifier. Various kernels are analyzed for the performance measure. It is found that SVM with a radial basis function kernel could achieve a success rate of 80.5%. The kernel parameters were chosen after performing grid search and cross validation. The result indicates that the bicepstral features could be utilized efficiently to form feature sets that could greatly aid in the classification process.

Keywords


Spectral Analysis, Bicepstral Coefficients, Vector Machines, Ocean Noise.