442 / 2022-10-03 10:55:21
Research on sound source localization based on residual network and channel attention module
Deep learning,Sound source localization,Channel attention,Microphone array
Abstract Pending
Fucai Hu / Wuhan University of Technology
Xiaohui Song / Wuhan University of Technology
Yongsheng Yu / Wuhan University of Technology
In this paper, a sound source localization model based on residual network and channel attention module is proposed.In this method, the residual structure and channel attention module are combined with the convolution layer of CRNN. The short-time Fourier phase spectrum is used as the input feature, and the advanced features are extracted and filtered by the residual structure and channel attention module, so as to obtain better localization performance.To illustrate the reliability of the proposed model, we first compare it with the popular Convolutional Recurrent Neural Network (CRNN)-based localization framework on a publicly available dataset, where our proposed model shows better performance in terms of localization accuracy and error, and also set up a comparison model to verify the effect of the channel attention module on the localization effect.On the other hand, we explored the performance of the model in the face of real data using microphone array signals collected in a real environment, and compared and analyzed the accuracy under seven different features, and the results showed that the combination of log-Mel spectrum and GCC-PHAT features possessed a more obvious advantage over the rest of the features, and the amplitude spectrum and log-Mel spectrum were the least effective in real data.
Important Date
  • Conference Date

    Nov 01

    2022

    to

    Nov 03

    2022

  • Oct 30 2022

    Draft paper submission deadline

  • Nov 09 2022

    Registration deadline

Sponsored By
Qingdao University of Technology