Driver fatigue detection using image sensors

The overall purpose of this study is to develop a software to detect driver fatigue using image sensors. The basic design of the study includes both self-built CNN model and also Transfer Learning using pre-trained model, specifically Inception-V3 and ResNet-50 to detect blink using classification o...

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Bibliographic Details
Main Author: Nur Amelina Ishak
Other Authors: Wang Han
Format: Final Year Project (FYP)
Language:English
Published: Nanyang Technological University 2020
Subjects:
Online Access:https://hdl.handle.net/10356/138759
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author Nur Amelina Ishak
author2 Wang Han
author_facet Wang Han
Nur Amelina Ishak
author_sort Nur Amelina Ishak
collection NTU
description The overall purpose of this study is to develop a software to detect driver fatigue using image sensors. The basic design of the study includes both self-built CNN model and also Transfer Learning using pre-trained model, specifically Inception-V3 and ResNet-50 to detect blink using classification of open and closed eyes which is eventually used to detect blink rate. Eyes is used in this project since it is the most significant symptom of fatigue. Higher blink rate usually associates with fatigue. Dataset was originally trained on ResNet-50 before being replaced by Inception-v3, giving an opportunity to compare results between the two models. Overall, ResNet-50 has proven to give higher accuracy. An important pointer to note is the biasness of the data which always has to be rectified. With the better pre-trained model in my research being ResNet-50, this diverges with my research of comparison between the two models which states that Inception-v3 is more accurate. In future, further development of the product will leverage on this model. In this project, implementation is reported in detail, together with evaluation of the results obtained. Finally, potential of further experiments to venture into could be done before concluding the project.
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spelling ntu-10356/1387592023-07-07T18:22:11Z Driver fatigue detection using image sensors Nur Amelina Ishak Wang Han School of Electrical and Electronic Engineering hw@ntu.edu.sg Engineering The overall purpose of this study is to develop a software to detect driver fatigue using image sensors. The basic design of the study includes both self-built CNN model and also Transfer Learning using pre-trained model, specifically Inception-V3 and ResNet-50 to detect blink using classification of open and closed eyes which is eventually used to detect blink rate. Eyes is used in this project since it is the most significant symptom of fatigue. Higher blink rate usually associates with fatigue. Dataset was originally trained on ResNet-50 before being replaced by Inception-v3, giving an opportunity to compare results between the two models. Overall, ResNet-50 has proven to give higher accuracy. An important pointer to note is the biasness of the data which always has to be rectified. With the better pre-trained model in my research being ResNet-50, this diverges with my research of comparison between the two models which states that Inception-v3 is more accurate. In future, further development of the product will leverage on this model. In this project, implementation is reported in detail, together with evaluation of the results obtained. Finally, potential of further experiments to venture into could be done before concluding the project. Bachelor of Engineering (Electrical and Electronic Engineering) 2020-05-12T07:54:05Z 2020-05-12T07:54:05Z 2020 Final Year Project (FYP) https://hdl.handle.net/10356/138759 en application/pdf Nanyang Technological University
spellingShingle Engineering
Nur Amelina Ishak
Driver fatigue detection using image sensors
title Driver fatigue detection using image sensors
title_full Driver fatigue detection using image sensors
title_fullStr Driver fatigue detection using image sensors
title_full_unstemmed Driver fatigue detection using image sensors
title_short Driver fatigue detection using image sensors
title_sort driver fatigue detection using image sensors
topic Engineering
url https://hdl.handle.net/10356/138759
work_keys_str_mv AT nuramelinaishak driverfatiguedetectionusingimagesensors