Acoustic Scene Classification Based on Convolutional Neural Network Using Double Image Features
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چکیده
This paper proposes new image features for the acoustic scene classification task of the IEEE AASP Challenge: Detection and Classification of Acoustic Scenes and Events. In classification of acoustic scenes, identical sounds being observed in different places may affect performance. To resolve this issue, a covariance matrix, which represents energy density for each subband, and a double Fourier transform image, which represents energy variation for each subband, were defined as features. To classify the acoustic scenes with these features, Convolutional Neural Network has been applied with several techniques to reduce training time and to resolve initialization and local optimum problems. According to the experiments which were performed with the DCASE2017 challenge development dataset it is claimed that the proposed method outperformed several baseline methods. Specifically, the class average accuracy is shown as 83.6%, which is an improvement of 8.8%, 9.5%, 8.2% compared to MFCC-MLP, MFCC-GMM, and CepsCom-GMM, respectively.
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تاریخ انتشار 2017