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[Keyword] music classification(5hit)

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  • Combining CNN and Broad Learning for Music Classification

    Huan TANG  Ning CHEN  

     
    PAPER-Music Information Processing

      Pubricized:
    2019/12/05
      Vol:
    E103-D No:3
      Page(s):
    695-701

    Music classification has been inspired by the remarkable success of deep learning. To enhance efficiency and ensure high performance at the same time, a hybrid architecture that combines deep learning and Broad Learning (BL) is proposed for music classification tasks. At the feature extraction stage, the Random CNN (RCNN) is adopted to analyze the Mel-spectrogram of the input music sound. Compared with conventional CNN, RCNN has more flexible structure to adapt to the variance contained in different types of music. At the prediction stage, the BL technique is introduced to enhance the prediction accuracy and reduce the training time as well. Experimental results on three benchmark datasets (GTZAN, Ballroom, and Emotion) demonstrate that: i) The proposed scheme achieves higher classification accuracy than the deep learning based one, which combines CNN and LSTM, on all three benchmark datasets. ii) Both RCNN and BL contribute to the performance improvement of the proposed scheme. iii) The introduction of BL also helps to enhance the prediction efficiency of the proposed scheme.

  • Speech/Music Classification Enhancement for 3GPP2 SMV Codec Based on Deep Belief Networks

    Ji-Hyun SONG  Hong-Sub AN  Sangmin LEE  

     
    LETTER-Speech and Hearing

      Vol:
    E97-A No:2
      Page(s):
    661-664

    In this paper, we propose a robust speech/music classification algorithm to improve the performance of speech/music classification in the selectable mode vocoder (SMV) of 3GPP2 using deep belief networks (DBNs), which is a powerful hierarchical generative model for feature extraction and can determine the underlying discriminative characteristic of the extracted features. The six feature vectors selected from the relevant parameters of the SMV are applied to the visible layer in the proposed DBN-based method. The performance of the proposed algorithm is evaluated using the detection accuracy and error probability of speech and music for various music genres. The proposed algorithm yields better results when compared with the original SMV method and support vector machine (SVM) based method.

  • Discriminative Weight Training for Support Vector Machine-Based Speech/Music Classification in 3GPP2 SMV Codec

    Sang-Kyun KIM  Joon-Hyuk CHANG  

     
    LETTER-Speech and Hearing

      Vol:
    E93-A No:1
      Page(s):
    316-319

    In this study, a discriminative weight training is applied to a support vector machine (SVM) based speech/music classification for a 3GPP2 selectable mode vocoder (SMV). In the proposed approach, the speech/music decision rule is derived by the SVM by incorporating optimally weighted features derived from the SMV based on a minimum classification error (MCE) method. This method differs from that of the previous work in that different weights are assigned to each feature of the SMV a novel process. According to the experimental results, the proposed approach is effective for speech/music classification using the SVM.

  • Speech/Music Classification Enhancement for 3GPP2 SMV Codec Based on Support Vector Machine

    Sang-Kyun KIM  Joon-Hyuk CHANG  

     
    LETTER-Speech and Hearing

      Vol:
    E92-A No:2
      Page(s):
    630-632

    In this letter, we propose a novel approach to speech/music classification based on the support vector machine (SVM) to improve the performance of the 3GPP2 selectable mode vocoder (SMV) codec. We first analyze the features and the classification method used in real time speech/music classification algorithm in SMV, and then apply the SVM for enhanced speech/music classification. For evaluation of performance, we compare the proposed algorithm and the traditional algorithm of the SMV. The performance of the proposed system is evaluated under the various environments and shows better performance compared to the original method in the SMV.

  • Music Style Mining and Classification by Melody

    Man-Kwan SHAN  Fang-Fei KUO  

     
    LETTER-Speech and Hearing

      Vol:
    E86-D No:3
      Page(s):
    655-659

    Music style is one of the features that people used to classify music. Discovery of music style is helpful for the design of content-based music retrieval systems. In this paper we investigated the mining and classification of music style by melody from a collection of MIDI music. We extracted the chord from the melody and investigated the representation of extracted features and corresponding mining techniques for music classification. Experimental results show that the classification achieved 64% to 84% accuracy for two-way classification.