2019
DOI: 10.1007/978-981-13-6459-4_14
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Feature Selection for Driver Drowsiness Detection

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Cited by 4 publications
(2 citation statements)
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“…Besides parameters of eye behavior currently connected with fatigue analysis, the driver emotional state (including stress and fatigue) could be also estimated by analysis of some selected characteristic points on the face (eye corners, mouth corners or eyebrows). Panda et al [175] described feature selection for analysis of driver drowsiness using eye movement to detect eye opening. Among evaluated methods (Canny Edge, Local Binary Patterns, Gabor Filter Bank, etc.…”
Section: ) Facial Expressionmentioning
confidence: 99%
“…Besides parameters of eye behavior currently connected with fatigue analysis, the driver emotional state (including stress and fatigue) could be also estimated by analysis of some selected characteristic points on the face (eye corners, mouth corners or eyebrows). Panda et al [175] described feature selection for analysis of driver drowsiness using eye movement to detect eye opening. Among evaluated methods (Canny Edge, Local Binary Patterns, Gabor Filter Bank, etc.…”
Section: ) Facial Expressionmentioning
confidence: 99%
“…The formula for negative class precisions is presented in (13). (12) (13) d) F1-Score: The F1-Score represents a weighted average between precision and recall and is hence considered the most appropriate measure of model performance in some literature [57,61]. Equation (14) presents the mathematical formula to calculate F1-Score [61,62].…”
Section: ) Model Evaluationmentioning
confidence: 99%