Facial Emotion Recognition for Photo and Video Surveillance Based on Machine Learning and Visual Analytics
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Authors
Kalyta, Oleg
Barmak, Olexander
Radiuk, Pavlo M.
Радюк, Павло Михайлович
Krak, Iurii
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Abstract
Modern video surveillance systems mainly rely on human operators to monitor and
interpret the behavior of individuals in real time, which may lead to severe delays in responding to
an emergency. Therefore, there is a need for continued research into the designing of interpretable
and more transparent emotion recognition models that can effectively detect emotions in safety video
surveillance systems. This study proposes a novel technique incorporating a straightforward model
for detecting sudden changes in a person’s emotional state using low-resolution photos and video
frames from surveillance cameras. The proposed technique includes a method of the geometric
interpretation of facial areas to extract features of facial expression, the method of hyperplane
classification for identifying emotional states in the feature vector space, and the principles of
visual analytics and “human in the loop” to obtain transparent and interpretable classifiers. The
experimental testing using the developed software prototype validates the scientific claims of the
proposed technique. Its implementation improves the reliability of abnormal behavior detection via
facial expressions by 0.91–2.20%, depending on different emotions and environmental conditions.
Moreover, it decreases the error probability in identifying sudden emotional shifts by 0.23–2.21%
compared to existing counterparts. Future research will aim to improve the approach quantitatively
and address the limitations discussed in this paper.
Description
Facial Emotion Recognition for Photo and Video Surveillance Based on Machine Learning and Visual Analytics / O. Kalyta, O. Barmak, P. Radiuk, I. Krak // Applied Sciences . – 2023. – 13, 9890 . – 29 р. https://doi.org/10.3390/app13179890
Citation
Facial Emotion Recognition for Photo and Video Surveillance Based on Machine Learning and Visual Analytics / O. Kalyta, O. Barmak, P. Radiuk, I. Krak // Applied Sciences . – 2023. – 13, 9890. – 29 р. https://doi.org/10.3390/app13179890