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257197

A CNN-LSTM-based Deep Learning Approach for Driver Drowsiness Prediction

Article

Last updated: 23 Jan 2023

Subjects

-

Tags

Computer Science and Engineering

Abstract

Abstract: The development of neural networks and machine learning techniques has recently been the cornerstone for many applications of artificial intelligence. These applications are now found in practically all aspects of our daily life. Predicting drowsiness is one of the most particularly valuable of artificial intelligence for reducing the rate of traffic accidents. According to earlier studies, drowsy driving is at responsible for 25 to 50% of all traffic accidents, which account for 1,200 deaths and 76,000 injuries annually. The goal of this research is to diminish car accidents caused by drowsy drivers. This research tests a number of popular deep learning-based models and presents a novel deep learning-based model for predicting driver drowsiness using a combination of convolutional neural networks (CNN) and Long-Short-Term Memory (LSTM) to achieve results that are superior to those of state-of-the-art methods. Utilizing convolutional layers, CNN has excellent feature extraction abilities, whereas LSTM can learn sequential dependencies. The National Tsing Hua University (NTHU) driver drowsiness dataset is used to test the model and compare it to several other current models as well as state-of-the-art models. The proposed model outperformed state-of-the-art models, with results up to 98.30% for training accuracy and 97.31% for validation accuracy.

DOI

10.21608/erjeng.2022.141514.1067

Keywords

Driver Drowsiness, Deep learning, CNN, LSTM, NTHU dataset

Authors

First Name

Mohamed

Last Name

Gomaa

MiddleName

Waheed

Affiliation

Computer science, Faculty of Computer and Artificial intelligence Benha University, Banha, Al Qalyubia

Email

mohamed.waheed16@fci.bu.edu.eg

City

cairo

Orcid

0000-0002-9011-8170

First Name

Rasha

Last Name

Mahmoud

MiddleName

O

Affiliation

Computer science, Faculty of Computer and Artificial intelligence Benha University, Banha, Al Qalyubia

Email

rasha.abdelkreem@fci.bu.edu.eg

City

-

Orcid

-

First Name

Amany

Last Name

Sarhan

MiddleName

M.

Affiliation

Computer and control engineering dept, faculty of engineering, Tanta university, Egypt

Email

amany_sarhan@f-eng.tanta.edu.eg

City

-

Orcid

-

Volume

6

Article Issue

3

Related Issue

36866

Issue Date

2022-09-01

Receive Date

2022-05-29

Publish Date

2022-09-26

Page Start

59

Page End

70

Print ISSN

2356-9441

Online ISSN

2735-4873

Link

https://erjeng.journals.ekb.eg/article_257197.html

Detail API

https://erjeng.journals.ekb.eg/service?article_code=257197

Order

8

Type

Original articles

Type Code

1,606

Publication Type

Journal

Publication Title

Journal of Engineering Research

Publication Link

https://erjeng.journals.ekb.eg/

MainTitle

-

Details

Type

Article

Created At

23 Jan 2023