• Title of article

    Infant Crying Classification by Using Genetic Algorithm and Artificial Neural Network

  • Author/Authors

    Bashiri ، Azadeh Department of Health Information Management - School of Management and Medical Information Sciences, Health Human Resources Research Center - Shiraz University of Medical Sciences , Hosseinkhani ، Roghaye Department of Electrical Engineering - Islamic Azad University, Kerman Branch

  • From page
    531
  • To page
    539
  • Abstract
    Cry as the only way of communication of babies with the surrounding environment can be happened for many reasons such as diseases, suffocation, hunger, cold and heat feeling, pain and etc. So, the analysis and detection of its source are very important for parents and health care providers. So the present study designed with the aim to test the performance of neural networks in the identification of the source of babies crying. The present study combines the genetic algorithm and artificial neural network with (Linear Predictive Coding) LPC and MFCC (Mel-Frequency Cepstral Coefficients) to classify the babies crying. The results of this study indicate the superiority of the proposed method compared to the other previous methods. This method could achieve the highest accuracy in the classification of newborns crying among the previous studies. Developing methods for classification audio signal analysis are promising and can be effectively applied in different areas such as babies crying.
  • Keywords
    Crying , Mel , frequency cepstral coefficients , Linear predictor coefficients , Neural networks , Genetic algorithms
  • Journal title
    Acta Medica Iranica
  • Journal title
    Acta Medica Iranica
  • Record number

    2576545