DESIGN OF A BLINK DETECTION SYSTEM USING COMPUTER VISION AND TRANSFER LEARNING
Long shift work duration and inadequate supervision contribute to an increased risk of incidents and accidents due to fatigue. Thus, a real-time fatigue measurement is needed to monitor and measure the levels of workers’ fatigue during work. One of the techniques that have been known to be reliab...
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Format: | Final Project |
Language: | Indonesia |
Online Access: | https://digilib.itb.ac.id/gdl/view/79388 |
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Institution: | Institut Teknologi Bandung |
Language: | Indonesia |
Summary: | Long shift work duration and inadequate supervision contribute to an increased risk of
incidents and accidents due to fatigue. Thus, a real-time fatigue measurement is needed
to monitor and measure the levels of workers’ fatigue during work. One of the
techniques that have been known to be reliable is a fatigue measurement technique that
focus on non-visual characteristics. However, this technique is considered as an
intrusive technique. Therefore, the other fatigue measurement technique that focus on
visual characteristics is more preferred. Ocular indicators are considered as one of the
most important fatigue indicators and thus can be applied for measuring fatigue in realtime
due to its non-intrusive characteristics. Furthermore, blink parameters such as
blink frequency and blink duration are considered as the most important and
informative parameters for measuring fatigue. This study aims to design an algorithm
and system prototype for blink detection then test the validity of the system-generated
blink parameters. This system is designed using computer vision and machine-learning
classifier based on convolutional neural network (CNN), MobileNet, with transfer
learning method in order to classify the eye state. The use of computer vision in blink
detection is presumed to be influenced by external conditions such as fluctuating
lighting intensity and vibrations. Two video recordings consist of two different external
conditions are used to test the presumption of different external conditions influencing
the system performance in blink detection. System performance is measured using
confusion matrix and the validity of the blink parameters are tested using statistical
tests. In conclusion, the proposed algorithm and system prototype are capable of
detecting blink and generate blink parameters such as blink frequency, blink duration,
microsleep and percentage of eyelid closure (PERCLOS), however the system is still
considered insufficient for real-time fatigue measurement based on performance
reasons. Furthermore, the system-generated blink parameters are proven reliable for
measuring fatigue, but only under controlled external condition. |
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