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Convolutional Networks Used to Classify Video and Audio Data

Author

Listed:
  • Nikmon Marcel
  • Budjač Roman
  • Kuchár Daniel
  • Schreiber Peter

    (Slovak University of Technology in Bratislava, Faculty of Materials Science and Technology in Trnava, Institute of Applied Informatics, Automation and Mechatronics, Ulica Jána Bottu 25, 917 24 Trnava, Slovak Republic)

  • Janáčová Dagmar

    (Tomas Bata University of Zlin, Faculty of Applied Informatics, Department of Automation and Control Engineering, Nad Stráněmi 4511, 760 05 Zlín, Czech Republic)

Abstract

Deep learning is a kind of machine learning, and machine learning is a kind of artificial intelligence. Machine learning depicts groups of various technologies, and deep learning is one of them. The use of deep learning is an integral part of the current data classification practice in today’s world. This paper introduces the possibilities of classification using convolutional networks. Experiments focused on audio and video data show different approaches to data classification. Most experiments use the well-known pre-trained AlexNet network with various pre-processing types of input data. However, there are also comparisons of other neural network architectures, and we also show the results of training on small and larger datasets. The paper comprises description of eight different kinds of experiments. Several training sessions were conducted in each experiment with different aspects that were monitored. The focus was put on the effect of batch size on the accuracy of deep learning, including many other parameters that affect deep learning [1].

Suggested Citation

  • Nikmon Marcel & Budjač Roman & Kuchár Daniel & Schreiber Peter & Janáčová Dagmar, 2019. "Convolutional Networks Used to Classify Video and Audio Data," Research Papers Faculty of Materials Science and Technology Slovak University of Technology, Sciendo, vol. 27(45), pages 113-120, September.
  • Handle: RePEc:vrs:repfms:v:27:y:2019:i:45:p:113-120:n:16
    DOI: 10.2478/rput-2019-0034
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