Learning to Predict Fitness for Duty using Near Infrared Periocular Iris
Images
- URL: http://arxiv.org/abs/2209.01683v1
- Date: Sun, 4 Sep 2022 19:48:45 GMT
- Title: Learning to Predict Fitness for Duty using Near Infrared Periocular Iris
Images
- Authors: Juan Tapia, Daniel Benalcazar, Andres Valenzuela, Leonardo Causa,
Enrique Lopez Droguett, Christoph Busch
- Abstract summary: This study focuses on determining the effect of external factors on the Central Nervous System.
The goal is to analyse how this impacts iris and pupil movement behaviours.
This paper proposes a modified MobileNetV2 to classify iris NIR images taken from subjects under alcohol/drugs/sleepiness influences.
- Score: 8.79172220232372
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: This research proposes a new database and method to detect the reduction of
alertness conditions due to alcohol, drug consumption and sleepiness
deprivation from Near-Infra-Red (NIR) periocular eye images. The study focuses
on determining the effect of external factors on the Central Nervous System
(CNS). The goal is to analyse how this impacts iris and pupil movement
behaviours and if it is possible to classify these changes with a standard iris
NIR capture device. This paper proposes a modified MobileNetV2 to classify iris
NIR images taken from subjects under alcohol/drugs/sleepiness influences. The
results show that the MobileNetV2-based classifier can detect the Unfit
alertness condition from iris samples captured after alcohol and drug
consumption robustly with a detection accuracy of 91.3% and 99.1%,
respectively. The sleepiness condition is the most challenging with 72.4%. For
two-class grouped images belonging to the Fit/Unfit classes, the model obtained
an accuracy of 94.0% and 84.0%, respectively, using a smaller number of
parameters than the standard Deep learning Network algorithm. This work is a
step forward in biometric applications for developing an automatic system to
classify "Fitness for Duty" and prevent accidents due to alcohol/drug
consumption and sleepiness.
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