Driver fatigue detection from facial features
Road traffic injury brings great harm and economic loss to individuals, families, and society. Fatigue driving is one of the causes of traffic accidents. Prevention is the fundamental strategy to prevent and reduce traffic accidents. In this project, a driver fatigue detection system is programmed b...
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2020
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sg-ntu-dr.10356-1455912023-07-07T18:00:28Z Driver fatigue detection from facial features Wang, Ping Wang Han School of Electrical and Electronic Engineering HW@ntu.edu.sg Engineering::Electrical and electronic engineering Road traffic injury brings great harm and economic loss to individuals, families, and society. Fatigue driving is one of the causes of traffic accidents. Prevention is the fundamental strategy to prevent and reduce traffic accidents. In this project, a driver fatigue detection system is programmed by using python, OpenCV and Keras. When the system detects the driver feeling sleepy, it will send out an alarm to remind the driver to stop for a little adjustment or rest, which can effectively prevent and reduce the occurrence of traffic accidents and provide a strong guarantee for the safety of people's lives and property. In the driver fatigue driving detection system, Harr cascade classifier corner detection method is used to determine the specific position of the face and eyes and the driver's eyes feature extraction. By using OpenCV to collect images from webcam, and then input them into CNN model to classified whether the human eyes are open or closed. Warning is given according to the duration of eye closure to remind drivers to pay attention to safety. The chapter 5 will explain and elaborate the proposed algorithm in detail. Bachelor of Engineering (Electrical and Electronic Engineering) 2020-12-30T01:29:15Z 2020-12-30T01:29:15Z 2020 Final Year Project (FYP) https://hdl.handle.net/10356/145591 en P1010-191 application/pdf Nanyang Technological University |
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Engineering::Electrical and electronic engineering Wang, Ping Driver fatigue detection from facial features |
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Road traffic injury brings great harm and economic loss to individuals, families, and society. Fatigue driving is one of the causes of traffic accidents. Prevention is the fundamental strategy to prevent and reduce traffic accidents. In this project, a driver fatigue detection system is programmed by using python, OpenCV and Keras. When the system detects the driver feeling sleepy, it will send out an alarm to remind the driver to stop for a little adjustment or rest, which can effectively prevent and reduce the occurrence of traffic accidents and provide a strong guarantee for the safety of people's lives and property.
In the driver fatigue driving detection system, Harr cascade classifier corner detection method is used to determine the specific position of the face and eyes and the driver's eyes feature extraction. By using OpenCV to collect images from webcam, and then input them into CNN model to classified whether the human eyes are open or closed. Warning is given according to the duration of eye closure to remind drivers to pay attention to safety. The chapter 5 will explain and elaborate the proposed algorithm in detail. |
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Wang Han |
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Wang Han Wang, Ping |
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Final Year Project |
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Wang, Ping |
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Wang, Ping |
title |
Driver fatigue detection from facial features |
title_short |
Driver fatigue detection from facial features |
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Driver fatigue detection from facial features |
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Driver fatigue detection from facial features |
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Driver fatigue detection from facial features |
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driver fatigue detection from facial features |
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Nanyang Technological University |
publishDate |
2020 |
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https://hdl.handle.net/10356/145591 |
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