2018
DOI: 10.1016/j.aap.2018.01.005
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A contextual and temporal algorithm for driver drowsiness detection

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Cited by 85 publications
(37 citation statements)
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“…Typical algorithms for driver drowsiness recognition were based on three types of inputs: (i) the biometric-signal-based approach [16][17][18][19]; (ii) the vehicle-based approach [20][21][22][23] and (iii) the image-based approach [24][25][26][27]. Approach (i) is intrusive whereas approaches (ii) and (iii) are non-intrusive.…”
Section: Existing Work Of Driver Drowsiness Recognitionmentioning
confidence: 99%
See 4 more Smart Citations
“…Typical algorithms for driver drowsiness recognition were based on three types of inputs: (i) the biometric-signal-based approach [16][17][18][19]; (ii) the vehicle-based approach [20][21][22][23] and (iii) the image-based approach [24][25][26][27]. Approach (i) is intrusive whereas approaches (ii) and (iii) are non-intrusive.…”
Section: Existing Work Of Driver Drowsiness Recognitionmentioning
confidence: 99%
“…Some works utilized more measurements as inputs for driver drowsiness recognition. For instance, in [22], besides the steering wheel angle, pedal input, vehicle speed and acceleration were selected as features for classification model based on the dynamic Bayesian network. The deviation from the current lane could also be a useful indicator of driver drowsiness, as verified using an exponentially weighted moving average [23].…”
Section: Existing Work Of Driver Drowsiness Recognitionmentioning
confidence: 99%
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