Monitoring Behaviour of Driver Through Sensors and Location of Accident Through Wireless Technology

Sowmya*, I. Suneetha**, N. Pushpalatha***
*** Assistant Professor, Department of ECE, Annamacharya Institute of Technology and Sciences, Tirupati, India.
Periodicity:February - April'2014
DOI : https://doi.org/10.26634/jes.3.1.2949

Abstract

A large number of serious or fatal accidents are occurred due to excessive or inappropriate speed of the vehicle. Distraction and drowsiness of the driver has been important factors for a large number of major accidents. They reduce the decision making capability and perception level of the driver which negatively affect the ability of the driver to control the vehicle. Monitoring the driver behavior is one of the ways to prevent the fatal accidents and it is necessary to alert the driver when they are drowsy or in a distracted state. With the new developed systems, there is a possibility of self controlling the vehicle when the driver was drunk or reckless or fatigue so that major accidents may be reduced. There is also a possibility of tracking the location of accident, if occurs, through Wireless Access Technology (GSM, GPS) so that proper measures are taken at correct time.

Keywords

Artificial Neural Networks, Driver Behavior, Global Position System (GPS), Global System for Mobile (GSM),

How to Cite this Article?

Sowmya., Suneetha., and Pushpalatha. (2014). Monitoring Behaviour Of Driver Through Sensors And Location Of Accident Through Wireless Technology. i-manager’s Journal on Embedded Systems, 3(1), 12-18. https://doi.org/10.26634/jes.3.1.2949

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