Driver fatigue detection using image sensors
Road traffic accidents happen every day in every part of the world. There are many causes for road traffic accidents. One of the causes is driver’s fatigue. In fact, fatigue driving has been one of the major causes for traffic accidents and it accounts for 20% of all traffic accidents in the world,...
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sg-ntu-dr.10356-1403992023-07-07T18:51:34Z Driver fatigue detection using image sensors Muhammad Radhi Fakhrurrazi Mohamed Sa’ad Wang Han School of Electrical and Electronic Engineering hw@ntu.edu.sg Engineering::Computer science and engineering Engineering::Electrical and electronic engineering Road traffic accidents happen every day in every part of the world. There are many causes for road traffic accidents. One of the causes is driver’s fatigue. In fact, fatigue driving has been one of the major causes for traffic accidents and it accounts for 20% of all traffic accidents in the world, which leads to many deaths and injuries [1]. Much research and inventions have been introduced to tackle the problem. Driver face detection and monitoring systems is one of the many solutions to fatigue driving. They can detect facial features such as eyes, nose and mouth. Apart from that, the system can extract the symptoms of fatigue. These symptoms are mainly percentage of eyelid closure over time (PERCLOS), rate of eye blink, eye sporadic movement, yawning and head nodding [2]. The robust technology that we have today for facial detections have been assisting us to analyse and recognise the symptoms in real time. This paper presents an introduction, project aim and methodology used to recognize and detect the facial features and fatigue symptoms. The general structure of the existing system will be discussed. The system will be programmed in Python. It uses the multi-task convolutional neural network (MTCNN) whereby multiple convolutional neural networks are tied together. A possible improvement will be further elaborated as well. Bachelor of Engineering (Electrical and Electronic Engineering) 2020-05-28T09:11:46Z 2020-05-28T09:11:46Z 2020 Final Year Project (FYP) https://hdl.handle.net/10356/140399 en A1200-191 application/pdf Nanyang Technological University |
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Engineering::Computer science and engineering Engineering::Electrical and electronic engineering Muhammad Radhi Fakhrurrazi Mohamed Sa’ad Driver fatigue detection using image sensors |
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Road traffic accidents happen every day in every part of the world. There are many causes for road traffic accidents. One of the causes is driver’s fatigue. In fact, fatigue driving has been one of the major causes for traffic accidents and it accounts for 20% of all traffic accidents in the world, which leads to many deaths and injuries [1]. Much research and inventions have been introduced to tackle the problem. Driver face detection and monitoring systems is one of the many solutions to fatigue driving. They can detect facial features such as eyes, nose and mouth. Apart from that, the system can extract the symptoms of fatigue. These symptoms are mainly percentage of eyelid closure over time (PERCLOS), rate of eye blink, eye sporadic movement, yawning and head nodding [2]. The robust technology that we have today for facial detections have been assisting us to analyse and recognise the symptoms in real time. This paper presents an introduction, project aim and methodology used to recognize and detect the facial features and fatigue symptoms. The general structure of the existing system will be discussed. The system will be programmed in Python. It uses the multi-task convolutional neural network (MTCNN) whereby multiple convolutional neural networks are tied together. A possible improvement will be further elaborated as well. |
author2 |
Wang Han |
author_facet |
Wang Han Muhammad Radhi Fakhrurrazi Mohamed Sa’ad |
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Final Year Project |
author |
Muhammad Radhi Fakhrurrazi Mohamed Sa’ad |
author_sort |
Muhammad Radhi Fakhrurrazi Mohamed Sa’ad |
title |
Driver fatigue detection using image sensors |
title_short |
Driver fatigue detection using image sensors |
title_full |
Driver fatigue detection using image sensors |
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Driver fatigue detection using image sensors |
title_full_unstemmed |
Driver fatigue detection using image sensors |
title_sort |
driver fatigue detection using image sensors |
publisher |
Nanyang Technological University |
publishDate |
2020 |
url |
https://hdl.handle.net/10356/140399 |
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1772827323388657664 |