Bird Sound Detection with Binarized Neural Networks

  • Zabidi M
  • Wong K
  • Sheikh U
  • et al.
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Abstract

By analysing the behavioural patterns of bird species in a specific region, researchers can predict future changes in the ecosystem. Many birds can be identified by their sounds, and autonomous recording units (ARUs) can capture real-time bird vocalisations. The recordings are analysed to see if there are any bird sounds. The sound of a bird can be used for further analysis, such as determining its species. Bird sound detection using Deep Neural Networks (DNNs) has been shown to outperform traditional methods. DNNs, however, necessitate a lot of storage and processing power. The use of Binarized Neural Networks (BNNs) is one of the most recent approaches to overcoming this limitation. In this paper, a bird sound detection architecture based on the XNOR-Net variant of BNN is used. Performance analysis of XNOR-Net in terms of the number of hidden layers used was performed, and the configuration with the highest accuracy was built. The system was tested using Xeno-Canto and UrbanSound8K datasets to represent bird and non-bird sounds, respectively. We achieved 96.06 per cent training accuracy and 94.08 per cent validation accuracy. We believe that BNNs are an effective method for detecting bird sounds.

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APA

Zabidi, M. M., Wong, K. L., Sheikh, U. U., Abdul Manan, S. S., & Hamzah, M. A. N. (2022). Bird Sound Detection with Binarized Neural Networks. ELEKTRIKA- Journal of Electrical Engineering, 21(1), 48–53. https://doi.org/10.11113/elektrika.v21n1.349

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