Biometrical driver face verification

Authors

  • Jolanta Chmielińska Military University of Technology in Warsaw
  • Jacek Jakubowski Military University of Technology in Warsaw

DOI:

https://doi.org/10.24136/atest.2018.039

Keywords:

road safety, monitoring system, convolutional neural networks, identity verification, face images, driver fatigue, tachogram

Abstract

The paper discusses the problem of face verification in a driver monitoring system for the purpose of traffic safety. Two different methods of face verification were proposed. Both of them are based on a convolutional neural network and were developed with the use of a transfer learning technique. In the paper, the results produced by both proposed method have been presented and compared. Moreover, their advantages and disadvantages have been discussed.

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References

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Published

2018-09-07

How to Cite

Chmielińska, J., & Jakubowski, J. (2018). Biometrical driver face verification. AUTOBUSY – Technika, Eksploatacja, Systemy Transportowe, 19(6), 68–72. https://doi.org/10.24136/atest.2018.039

Issue

Section

Articles