Face Recognition For Drunk Driver
This project's objective is to determine whether there is a discernible difference between the face behaviours of persons who are drunk and those of people who are sober. There is a significant amount of face recognition that occurs in situations involving intoxicated persons. It is imperati...
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Main Author: | |
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Format: | Final Year Project Report |
Language: | English English |
Published: |
Universiti Malaysia Sarawak (UNIMAS)
2023
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Online Access: | http://ir.unimas.my/id/eprint/42996/1/MUHAMMAD%20FAKHRUL%20ALIF%20BIN%20HEIRMAN%20%2824pgs%29.pdf http://ir.unimas.my/id/eprint/42996/2/MUHAMMAD%20FAKHRUL%20ALIF%20BIN%20HEIRMAN%20%28Fulltext%29.pdf http://ir.unimas.my/id/eprint/42996/ |
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Institution: | Universiti Malaysia Sarawak |
Language: | English English |
Summary: | This project's objective is to determine whether there is a discernible difference between
the face behaviours of persons who are drunk and those of people who are sober. There
is a significant amount of face recognition that occurs in situations involving intoxicated
persons. It is imperative that intoxicated drivers be identified as soon as possible,
preferably before they get behind the wheel, to reduce the likelihood that an accident will
take place. At the outset, a comparison is made between the facial behaviour of a drunk
person and that of a sober person. This is followed by the collection of comprehensive
data regarding the distinction between the two face behaviours through the utilisation of
the data that is produced following the training of the digital images through Image
Processing. This procedure has the potential to demonstrate that the distinction between
intoxicated and sober people can be identified based on facial behaviour, and that the
distinction can be spotted using computer vision. The first approach for achieving the
project's objectives is to run the face detection method, which detects the red colour on
the eyes, nose, and cheeks by utilising Haar Cascade to identify just the face and obtain
the confidence rate value. The project proceeds by completing the training and testing
processes for all digital photographs, which are classified into three cases. A total of 100
digital images of sober face and 100 digital images of drunk face from single individuals
for case 1. For case 2, 150 digital images of drunk face and 150 digital images of sober
face from multiple individuals. As for case 3, a total of 50 digital images of sober faces
and 50 digital images of drunk faces from multiple individuals. To meet the project's
goals, a probability comparison from the testing procedure between drunk and sober is
performed. The confidence rate of red colour detection for eyes, nose and cheek is
between 75% until 98% for drunk face and 35% until 74% for sober face. Meanwhile, the
probability of drunk face is approximately between 0.94 until 0.99 and probability of
sober face is between 0.62 until 0.84 for case 1. Next, the probability of drunk face is
between 0.79 until 0.95 and the probability for sober face is between 0.78 until 1.00 for
case 2. For case 3, the probability of drunk face is between 0.62 until 0.99 and the
probability of between 0.91 until 0.99 was for sober face. |
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