2017
DOI: 10.1145/3090088
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iLid

Abstract: The ability to monitor eye closures and blink patterns has long been known to enable accurate assessment of fatigue and drowsiness in individuals. Many measures of the eye are known to be correlated with fatigue including coarse-grained measures like the rate of blinks as well as fine-grained measures like the duration of blinks and the extent of eye closures. Despite a plethora of research validating these measures, we lack wearable devices that can continually and reliably monitor them in the natural environ… Show more

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Cited by 19 publications
(2 citation statements)
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References 52 publications
(33 reference statements)
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“…The results showed the mode, Hurst, sample entropy, and mean as the best for all the EOG features. Additionally, the ensemble classifier provided comparatively good performance and accuracy compared to the other classifiers [ 47 ], as it used the bagging strategy. This improvement in accuracy came with a much longer response time and fewer error [ 48 ].…”
Section: Resultsmentioning
confidence: 99%
“…The results showed the mode, Hurst, sample entropy, and mean as the best for all the EOG features. Additionally, the ensemble classifier provided comparatively good performance and accuracy compared to the other classifiers [ 47 ], as it used the bagging strategy. This improvement in accuracy came with a much longer response time and fewer error [ 48 ].…”
Section: Resultsmentioning
confidence: 99%
“…Specifically, our focus is on classifying five different upper facial action units -raising eyebrows (AU01), lowering eyebrows (AU04), raising cheek (AU06), and nose wrinkler (AU09) which are known to be the most important facial actions for pain sensing. In addition to these, we also show that we can detect blinks (AU45) which provides useful information regarding fatigue, attention and even dopaminergic levels [25,46,47,51]. Prior work has focused on detecting these changes using a camera but our goal is to detect these using EOG electrodes on an unobtrusive wearable eyeglass.…”
Section: Challenges In Detecting Upper Facial Actions For Pain Monitomentioning
confidence: 91%