HUANG Cheng-Wei, JIN Yun, WANG Qing-Yun, ZHAO Yan, ZHAO Li. Speech Emotion Recognition Based on Decomposition of Feature Space and Information Fusion[J]. JOURNAL OF SIGNAL PROCESSING, 2010, 26(6): 835-842.
Citation: HUANG Cheng-Wei, JIN Yun, WANG Qing-Yun, ZHAO Yan, ZHAO Li. Speech Emotion Recognition Based on Decomposition of Feature Space and Information Fusion[J]. JOURNAL OF SIGNAL PROCESSING, 2010, 26(6): 835-842.

Speech Emotion Recognition Based on Decomposition of Feature Space and Information Fusion

  •  A method of optimizing feature space for speech emotion recognition is proposed. To achieve better classification between each emotion class; feature space of each pair of emotions were optimized respectively; decomposition of multi-class classifier into two-class classifiers was studied; a decision fusion technique was introduced to re-compose the two-class classifier set; recognition results of multi-class classifier and two-class classifier set were compared in a computer experiment. The results show, recognition rates were improved more than 8 percent under identical environments. The method in this paper, decomposition of multiclass classifier, optimizing feature space of each pair of emotions and decomposition using decision fusion algorithm, is suitable for speech emotion recognition and effective in optimization of feature space.
  • loading

Catalog

    /

    DownLoad:  Full-Size Img  PowerPoint
    Return
    Return