Mohammad Hossein Sedaaghi

Department of Electrical Engineering, Sahand University of Technology, Tabriz, Iran

Publications
  • Review Article   
    Underwater Acoustic Target Recognition in Passive Sonar Using Spectrogram and Modified MobileNet Network Classifier
    Author(s): Hassan Akbarian* and Mohammad Hossein Sedaaghi

    When the surface and subsurface floats move in the water, they emit sounds due to their propulsion engines as well as the rotation of their propellers. One of the best methods in Underwater Automatic Target Recognition (UATR) is to use deep learning to extract features and supervised train acoustic datasets that are used in the world’s naval forces. In this article, to achieve reliable results by deep learning methods, we collected the raw acoustic signals received by the hydrophones in the relevant database with the label of each class, and we performed the necessary pre-processing on them so that they become a stationary signal and finally provided them to the spectrogram system. Next, by using Short-Term Frequency Transformation (STFT), the spectrogram of high resonance components is obtained and used as the input of the modified MobileNet classifier for model training and ev.. View more»

    DOI: 10.35248/2090-4908.25.14.428

    Abstract HTML PDF