International Conference on Distributed, Ambient, and Pervasive Interactions

DAPI 2015: Distributed, Ambient, and Pervasive Interactions pp 408-417 | Cite as

Aspects Concerning the Calibration Procedure for a Dual Camera Smartphone Based ADAS

  • Mihai Duguleana
  • Florin Girbacia
  • Cristian Postelnicu
  • Andreea Beraru
  • Gheoghe Mogan
Conference paper
Part of the Lecture Notes in Computer Science book series (LNCS, volume 9189)

Abstract

We present the architecture of an Advanced Driver Assistance System (ADAS) based on common dual camera smartphones, emphasizing on the calibration procedure which is active during the initialization phase (prior to the actual driving). NAVIEYES project attempts to make use of the video information received from both the front and the rear cameras of the phone in order to infer and alert drivers upon potential dangerous situations. This study focuses on the information received from the front camera. 10 different mobile devices were tested, in order to choose the most powerful and ergonomic platform. A calibration experiment is carried by 22 subjects, and the first version of the application is tested using a driving simulator. The system is deployed on a real car, and several warning paradigms such as audio, video and mixed alerts are also analyzed. We present the HCI questionnaire, analyze the data and propose further developments.

Keywords

Personal navigation assistant Smartphone Dual camera Driver assistant ADAS 

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Copyright information

© Springer International Publishing Switzerland 2015

Authors and Affiliations

  • Mihai Duguleana
    • 1
  • Florin Girbacia
    • 1
  • Cristian Postelnicu
    • 1
  • Andreea Beraru
    • 1
  • Gheoghe Mogan
    • 1
  1. 1.Department of Automotive and Transport EngineeringUniversity Transilvania of BrasovBrașovRomania

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