The search functionality is under construction.

Author Search Result

[Author] Xiaoyan ZHAO(2hit)

1-2hit
  • Speech Emotion Recognition Using Multihead Attention in Both Time and Feature Dimensions

    Yue XIE  Ruiyu LIANG  Zhenlin LIANG  Xiaoyan ZHAO  Wenhao ZENG  

     
    LETTER-Speech and Hearing

      Pubricized:
    2023/02/21
      Vol:
    E106-D No:5
      Page(s):
    1098-1101

    To enhance the emotion feature and improve the performance of speech emotion recognition, an attention mechanism is employed to recognize the important information in both time and feature dimensions. In the time dimension, multi-heads attention is modified with the last state of the long short-term memory (LSTM)'s output to match the time accumulation characteristic of LSTM. In the feature dimension, scaled dot-product attention is replaced with additive attention that refers to the method of the state update of LSTM to construct multi-heads attention. This means that a nonlinear change replaces the linear mapping in classical multi-heads attention. Experiments on IEMOCAP datasets demonstrate that the attention mechanism could enhance emotional information and improve the performance of speech emotion recognition.

  • Weighted Gradient Pretrain for Low-Resource Speech Emotion Recognition

    Yue XIE  Ruiyu LIANG  Xiaoyan ZHAO  Zhenlin LIANG  Jing DU  

     
    LETTER-Speech and Hearing

      Pubricized:
    2022/04/04
      Vol:
    E105-D No:7
      Page(s):
    1352-1355

    To alleviate the problem of the dependency on the quantity of the training sample data in speech emotion recognition, a weighted gradient pre-train algorithm for low-resource speech emotion recognition is proposed. Multiple public emotion corpora are used for pre-training to generate shared hidden layer (SHL) parameters with the generalization ability. The parameters are used to initialize the downsteam network of the recognition task for the low-resource dataset, thereby improving the recognition performance on low-resource emotion corpora. However, the emotion categories are different among the public corpora, and the number of samples varies greatly, which will increase the difficulty of joint training on multiple emotion datasets. To this end, a weighted gradient (WG) algorithm is proposed to enable the shared layer to learn the generalized representation of different datasets without affecting the priority of the emotion recognition on each corpus. Experiments show that the accuracy is improved by using CASIA, IEMOCAP, and eNTERFACE as the known datasets to pre-train the emotion models of GEMEP, and the performance could be improved further by combining WG with gradient reversal layer.