scispace - formally typeset
Open Access

A proficient system for preventing and acknowledging about the drunken drive by analysing the neuronal - activitiy of the brain

Ila Vennila
Reads0
Chats0
TLDR
The designed mechanical system that prevents drunken drive and its subsequent catastrophes by monitoring the EEG of the driver is proposed and makes use of threshold values of alpha, beta and theta waves to differentiate EEG of alcoholic from non-alcoholic.
Abstract
As it is regardless to say, majority of accidents occur due to drunken driving. Driving while intoxicated (DWI) (drunken driving, which means operating under the influence of alcohol, drinking and driving, impaired driving) is the act of driving a motor vehicle with blood levels of alcohol in excess of a legal limit. Though drunken driving is considered to be a criminal offense in most countries, it still remains to be a serious, unavoidable problem. Therefore, a highly efficient system that provides early prevention of drunken drive to protect the public from drunken drive male facts is the current need to society. In this paper, we intend to propose the designed mechanical system that prevents drunken drive and its subsequent catastrophes by monitoring the EEG of the driver. The power of the EEG signal in frontal region (alpha waves) decreases with the increase in the amount of alcohol intake, and the power of the EEG signal in central, occipital region (delta, beta) increases. Therefore, in this paper, we make use of threshold values of alpha, beta and theta waves to differentiate EEG of alcoholic from non-alcoholic. The continuous EEG monitoring of the driver makes our system highly reliable to prevent drunken drive accidents. Further, in our proposed system, we make use of special indicators called prevention indicator to avoid inconvenience to other drivers and prevent the accidents due to collision of vehicles. Once any evidence of drunk driving is present, SMS which contains the current location of the driver by means of GPS is sent via a GSM module to the police control room. Thus our exemplary system emerges to be a highly efficient and cost effective solution to prevent drunken drive accidents.

read more

Content maybe subject to copyright    Report

Citations
More filters
Journal ArticleDOI

Python (Deep Learning and Machine Learning) for EEG Signal Processing on the Example of Recognizing the Disease of Alcoholism

TL;DR: The manuscript demonstrates that the deep neural network which operates only with a dataset of EEG correlation signals can anonymously classify the alcoholic and control groups with high accuracy.
Posted ContentDOI

Deep learning and machine learning to recognizing the disease of alcoholism by EEG signal processing

TL;DR: In this paper, a method for the quick and anonymous alcoholism diagnosis by neural networks is presented, which does not need any private information about the subject. But, the method requires the subject to be tested for alcoholism without any personal data, which will not cause inconvenience or shame in the subject, and the subject will not be able to deceive specialists who diagnose the subject for the presence of the disease.
Posted ContentDOI

Python (deep learning and machine learning) for EEG signal processing on the example of recognizing the disease of alcoholism

TL;DR: The manuscript demonstrates that the deep neural network which operates only with a dataset of EEG correlation signals can anonymously classify the alcoholic and control groups with high accuracy.
Journal ArticleDOI

Study of effects of blood alcohol consumption (BAC) level on drivers physiological behavior and driving performance under simulated environment

TL;DR: Results showed that statistically significantly decreased alpha and increased theta power frequency was observed with increased BAC level, which affected drivers’ decision-making ability, vision and integrating visual information ability.
References
More filters
Journal ArticleDOI

The use of fast Fourier transform for the estimation of power spectra: A method based on time averaging over short, modified periodograms

TL;DR: In this article, the use of the fast Fourier transform in power spectrum analysis is described, and the method involves sectioning the record and averaging modified periodograms of the sections.
Journal ArticleDOI

Abnormal gray and white matter volume in delusional infestation

TL;DR: Investigating gray and white matter abnormalities in delusional infestation shows that structural changes in prefrontal, temporal, insular, cingulate and striatal brain regions are associated with DI, supporting a neurobiological model of disrupted prefrontal control over somato-sensory representations.
Book

Time frequency and wavelets in biomedical signal processing

Metin Akay
TL;DR: This edited volume incorporates the most recent developments in the field to illustrate thoroughly how the use of these time-frequency methods is currently improving the quality of medical diagnosis, including technologies for assessing pulmonary and respiratory conditions.
Journal ArticleDOI

Lapses in alertness: coherence of fluctuations in performance and EEG spectrum.

TL;DR: These results show that attempts to maintain alertness in an auditory detection task result in concurrent minute and multi-minute scale fluctuations in performance and the EEG power spectrum.
Related Papers (5)