APPROACHES AND SOLUTIONS FOR SIGN LANGUAGE RECOGNITION PROBLEM

Authors

  • Aleksejs Zorins Rezekne Academy of Technology (LV)
  • Pēteris Grabusts Rezekne Academy of Technology (LV)

DOI:

https://doi.org/10.17770/sie2018vol1.3082

Keywords:

Sign language recognition, artificial neural networks, Latvian sign language

Abstract

The goal of the paper is reviewing several aspects of Sign Language Recognition problems focusing on Artificial Neural Network approach. The lack of automated Latvian Sign Language has identified and proposals of how to develop such a system have made. Tha authors use analytical, statistical methods as well as practical experiments with neural network software. The main results of the paper are description of main Sign Language Recognition problem solving methods with Artificial Neural Networks and directions of future work based on authors’ previous expertise.

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References

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Published

2018-05-25

How to Cite

Zorins, A., & Grabusts, P. (2018). APPROACHES AND SOLUTIONS FOR SIGN LANGUAGE RECOGNITION PROBLEM. SOCIETY. INTEGRATION. EDUCATION. Proceedings of the International Scientific Conference, 5, 475-483. https://doi.org/10.17770/sie2018vol1.3082