2023
DOI: 10.14569/ijacsa.2023.0140127
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Data Augmentation for Deep Learning Algorithms that Perform Driver Drowsiness Detection

Abstract: Driver drowsiness is one of the main causes of driver-related motor vehicle collisions, as this impairs a person's concentration whilst driving. With the enhancements of computer vision and deep learning (DL), driver drowsiness detection systems have been developed previously, in an attempt to improve road safety. These systems experienced performance degradation under real-world testing due to factors such as driver movement and poor lighting. This study proposed to improve the training of DL models for drive… Show more

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Cited by 4 publications
(2 citation statements)
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“…Even so, the algorithm is much more reliable than a variant which uses the eye detection variant (using the classification model 'EyePairBig' or 'EyePairSmall') when the detection is much worse. The face tracking algorithm in this case is sufficiently robust to work properly even in relatively extreme cases (Figure 11) [36][37][38]. Having detected the feature points, we can apply a point tracker algorithm, whic our case was the Kanade-Lucas-Tomasi (KLT) algorithm [35].…”
Section: Face Detection and Tracking Algorithmsmentioning
confidence: 99%
“…Even so, the algorithm is much more reliable than a variant which uses the eye detection variant (using the classification model 'EyePairBig' or 'EyePairSmall') when the detection is much worse. The face tracking algorithm in this case is sufficiently robust to work properly even in relatively extreme cases (Figure 11) [36][37][38]. Having detected the feature points, we can apply a point tracker algorithm, whic our case was the Kanade-Lucas-Tomasi (KLT) algorithm [35].…”
Section: Face Detection and Tracking Algorithmsmentioning
confidence: 99%
“…In one of the experimental studies, we applied several data augmentation steps such as rescaling, flipping, zooming, and rotating, as suggested in earlier research [22,43], to address the issue of limited data availability, which causes over-fitting of the model. Below, an explanation of each data augmentation method is given along with its impact.…”
Section: Data Augmentationmentioning
confidence: 99%