Please I want full report and full MATLAB code on "Driver Assistant system:Computer vision based drowsiness detection". Plz inform me if it will b available here or not plzzz...
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In recent years, driver drowsiness has been a major cause of road traffic accidents and can lead to serious physical injuries, fatalities and significant economic losses. Statistics indicate the need for a reliable driver drowsiness detection system that could alert the driver before a mishap occurs.
Researchers have attempted to determine driver drowsiness using the following measures:
(1) measures based on vehicles;
(2) behavioral and
(3) physiological measures.
A detailed review of these measures will provide insight into current systems, issues associated with them, and the improvements that need to be made to make a robust system. In this paper, we review these three measures in terms of the sensors used and discuss the advantages and limitations of each. Also discussed are the various forms through which drowsiness has been experimentally manipulated. We conclude that designing a hybrid drowsiness detection system that combines non-intumescent physiological measurements with other measures would accurately determine the level of drowsiness of a driver. A number of traffic accidents could be avoided if an alert is sent to a driver who is considered sleepy.
A sleepy driver detection system and a distress signaling system using concepts based on non-intrusive machine vision. In recent automobile theft and fatigue-related accidents have really expanded. In order to minimize these problems, we have incorporated biometric security through Iris recognition that will aid in authentication and improved sleep detection and driver alert system by monitoring the driver's eyes as well as detecting The variation of the heat of the body through infrared thermal sensor. The emergency signaling system is built-in so that drivers get help from the police in need without revealing it to the people around them. This article combines computer vision, pattern recognition and optics. All image processing was done with NI Vision Assistant. NI LabVIEW was also used to take the current body temperature of the temperature sensors connected to the DAQ (data acquisition) signal accessory.
Driver fatigue is a significant factor in a large number of vehicle accidents. The development of technologies to detect or prevent sleepiness at the wheel is a major challenge in the field of accident prevention systems. Due to the danger that drowsiness presents on the road, the methods must be developed to counteract their affects. The objective of this project is to develop a prototype of drowsiness detection system. The focus will be on designing a system that will accurately monitor the movements of a driver's head in real time. By tracking the movements of the head, it is believed that the symptoms of driver fatigue can be detected early enough to avoid a car accident.
Documentation of drowsy driver detection project